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Benchmark problems for physics-informed neural networks: The Allen–Cahn equation

  • Received: 31 December 2024 Revised: 06 March 2025 Accepted: 26 March 2025 Published: 28 March 2025
  • MSC : 35K57, 65M22, 82C26

  • In this paper, we present accurate and well-designed benchmark problems for evaluating the effectiveness and precision of physics-informed neural networks (PINNs). The presented problems were generated using the Allen–Cahn (AC) equation, which models the mechanism of phase separation in binary alloy systems and simulates the temporal evolution of interfaces. The AC equation possesses the property of motion by mean curvature, which means that, in the sharp interface limit, the evolution of the interface described by the equation is governed by its mean curvature. Specifically, the velocity of the interface is proportional to its mean curvature, which implies the tendency of the interface to minimize its surface area. This property makes the AC equation a powerful mathematical model for capturing the dynamics of interface motion and phase separation processes in various physical and biological systems. The benchmark source codes for the 1D, 2D, and 3D AC equations are provided for interested researchers.

    Citation: Hyun Geun Lee, Youngjin Hwang, Yunjae Nam, Sangkwon Kim, Junseok Kim. Benchmark problems for physics-informed neural networks: The Allen–Cahn equation[J]. AIMS Mathematics, 2025, 10(3): 7319-7338. doi: 10.3934/math.2025335

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  • In this paper, we present accurate and well-designed benchmark problems for evaluating the effectiveness and precision of physics-informed neural networks (PINNs). The presented problems were generated using the Allen–Cahn (AC) equation, which models the mechanism of phase separation in binary alloy systems and simulates the temporal evolution of interfaces. The AC equation possesses the property of motion by mean curvature, which means that, in the sharp interface limit, the evolution of the interface described by the equation is governed by its mean curvature. Specifically, the velocity of the interface is proportional to its mean curvature, which implies the tendency of the interface to minimize its surface area. This property makes the AC equation a powerful mathematical model for capturing the dynamics of interface motion and phase separation processes in various physical and biological systems. The benchmark source codes for the 1D, 2D, and 3D AC equations are provided for interested researchers.



    Data analysis has been received a great interest in several applied fields such as medicine, reliability analysis, engineering, environmental studies, and economics. Several authors have proposed more flexible statistical distributions to model and predict various experimental and phenomenal data encountered in applied fields.

    The Fréchet (Fr) distribution is also known as the inverse-Weibull distribution and it is one of the useful distributions in extreme value theory. The Fr model has some important applications in life testing, floods, earthquakes, and wind speeds, among others. Further information about the applications of the Fr distribution can be explored in [1,2,3,4,5].

    The Fr distribution is specified by the following cumulative distribution function (CDF)

    F(x;θ,λ)=eλxθ,θ,λ>0,x>0. (1.1)

    Its probability density function (PDF) reduces to

    f(x;θ,λ)=θλx(θ+1)eλxθ,θ,λ>0,x>0, (1.2)

    where θ and λ are, respectively, the shape and scale parameters. The PDF (1.2) exhibits a unimodal shape or a decreasing shape depending on θ while its hazard rate function (HRF) is always unimodal.

    There is a clear need to define and develop more flexible versions of the Fr model using the well-known families to model several datasets encountered in many applied fields such as medicine, geology, engineering, and economics, among others. Hence, many authors have proposed several generalized forms of the Fr distribution to improve its flexibility and capability in modeling real-life data. Some notable extensions are the following: the exponentiated-Fr [6], beta-Fr [7], Marshall–Olkin Fr [8], transmuted Marshall–Olkin Fr [9], Weibull–Fr [10], beta exponential-Fr [11], Burr-X Fr [12], odd Lindley–Fr [13], logarithmic-transformed Fr [14], and modified Kies–Fr distributions [15].

    This article introduces a new flexible extension of the Fr distribution called the extended Weibull–Fréchet (EWFr) distribution, which provides more flexibility to model real-life data than other competing distributions. Then, the first motivation to this article is devoted to introducing the EWFr distribution as a new extension of the Fr distribution via the extended Weibull-G (EW-G) family [16]. The useful characteristics of the EWFr distribution can be summarized as follows: The EWFr distribution is a more flexible version for the Fr distribution, and it improves the fitting of real-life data; it produces more flexible kurtosis than the baseline Fr model. The HRF of the EWFr distribution can exhibit an upside-down bathtub shape, an increasing shape, and a decreasing shape. Its density function can exhibit a symmetrical shape, a unimodal shape, an asymmetrical shape, a J shape, and a reversed-J shape. Furthermore, the EWFr distribution can be adopted to model various data in the medicine and engineering sciences. This fact was illustrated by modeling two real datasets from both fields, showing its superiority fit over other competing distributions.

    Another motivation to this article is to show how several classical estimators of the EWFr distribution perform for different parameter combinations and several sample sizes. Hence, the EWFr parameters are estimated using different estimation approaches including: the maximum product of spacings estimators (MPSEs), least-squares estimators (LSEs), the right-tail Anderson-Darling estimators (RADEs), the maximum likelihood estimators (MLEs), the weighted least-squares estimators (WLSEs), the percentiles estimators (PCEs), the Cramér–von Mises estimators (CRVMEs), and the Anderson–Darling estimators (ADEs). Extensive simulation results were introduced to explore the performance of these estimators. Furthermore, these estimators are compared using partial and overall ranks to determine the best method for estimation the parameters of the EWFr distribution.

    The paper is organized in six sections as follows: Section 2 introduces the EWFr distribution and its related functions. The distribution properties are determined in Section 3. Section 4 presents some classical estimators of the EWFr parameters. The simulation results for the classical methods are provided in the same section. Two real-life datasets are fitted using the EWFr distribution in Section 5. Some final remarks are presented in Section 6.

    The EWFr distribution is constructed based on the EW-G family [16] which is specified, for any baseline CDF G(x;ζ), by the CDF

    F(x;ϑ,φ,ζ)=1{1+φ[G(x;ζ)1G(x;ζ)]ϑ}1φ,ϑ,φ>0,x. (2.1)

    The corresponding PDF of (2.1) takes the form

    f(x;ϑ,φ,ζ)=ϑg(x;ζ)G(x;ζ)ϑ1[1G(x;ζ)]ϑ+1{1+φ[G(x;ζ)1G(x;ζ)]ϑ}1φ1. (2.2)

    where g(x;ζ)=dG(x;ζ)/dx refers to the baseline density with parameter vector ζ.

    To this end, by inserting Eq (1.1) in (2.1), the CDF of the EWFr model follows as

    F(x;η)=1{1+φ(eλxθ1)ϑ}1φ,ϑ,φ,λ,θ>0,x>0, (2.3)

    where η=(ϑ,φ,λ,θ). The PDF of the EWFr model reduces to

    f(x;η)=ϑθλx(θ+1)eλxθ(eλxθ1)(ϑ+1){1+φ(eλxθ1)ϑ}(1φ+1), (2.4)

    where ϑ,φ and θ are shape parameters whereas λ is a scale parameter.

    The survival function (SF) of the EWFr distribution is given as

    S(x;η)={1+φ(eλxθ1)ϑ}1φ.

    Long-term SF (LT-SF) is a useful feature in the modeling process, because a portion of the population may no longer be eligible to the event of interest with probability p (see [17,18]).

    The general form of the LT-SF is SLT(x;p,η)=p+(1p)S(x;η), where S(x;η) denotes the SF of any distribution and p denotes the probability of being cured. Hence, the PDF of the LT-SF can be derived as

    fLT(x;p,η)=xSLT(x;p,η)=(1p)f(x;p,η),p(0,1).

    Using Eq (2.4), the PDF of the LT-SF of the EWFr distribution takes the form

    fLT(x;p,η)=ϑθλ(1p)eλxθxθ+1(eλxθ1)(ϑ+1){1+φ(eλxθ1)ϑ}(1φ+1).

    The HRF of the EWFr distribution takes the form

    h(x;η)=ϑθλx(θ+1)eλxθ(eλxθ1)(ϑ+1)1+φ(eλxθ1)ϑ.

    Its reversed HRF has the form

    r(x;η)=ϑθλx(θ+1)eλxθ(eλxθ1)(ϑ+1){1+φ(eλxθ1)ϑ}(1φ+1)1{1+φ(eλxθ1)ϑ}1φ.

    The odd ratio of the EWFr model is derived as

    O(x;η)=F(x|η)S(x|η)={1+φ(eλxθ1)ϑ}1φ1.

    Figure 1 presents some possible shapes of the EWFr PDF for different values of its parameters. The EWFr PDF can be a symmetrical shape, a unimodal shape, an asymmetrical shape, a J shape, and a reversed-J shape. The hazard rate plots of the EWFr model are depicted in Figure 2. The EWFr HRF can be an increasing shape, a unimodal shape, and a decreasing shape.

    Figure 1.  Possible shapes of the EWFr PDF for several values of ϑ, φ, λ and θ.
    Figure 2.  Possible shapes of the EWFr HRF for several values of ϑ, φ, λ and θ.

    The quantile function (QF) of the EWFr distribution, say, Q(u), can be calculated by solving F(x)=p in (2.3) in terms of p. Then, the EWFr QF follows as

    Q(p)=λ1θ{ln([(1p)φ1]1ϑφ1ϑ+[(1p)φ1]1ϑ)}1θ,0<p<1. (3.1)

    The median of the EWFr distribution follows by substituting p=0.5 in Eq (3.1).

    A useful linear representation for the PDF of the EWFr model is provided based on [16]. Alizadeh et al. [16] introduced a simple representation for the density of the EW-G class as follows

    f(x)=w,u=0ψw,uhϑw+u(x), (3.2)

    where ψw,u=φwΓ(ϑw+u)(1φ)w/[w!u!Γ(ϑw)] and

    hϑw+u(x)=(ϑw+u)g(x)G(x)ϑw+u1,

    is the exponentiated-G PDF with a power parameter (ϑw+u)>0. Using Eqs (1.1) and (1.2) of the Fr distribution, Eq (3.2) can be expressed as

    f(x)=w,u=0ψw,u(ϑw+u)θλx(θ+1)e(ϑw+u)λxθ. (3.3)

    Equation (3.3) can be rewritten as

    f(x)=w,u=0ψw,ug(ϑw+u)(x), (3.4)

    where g(ϑw+u)(x) denotes the Fr PDF with two-parameter θ and (ϑw+u)λ. Then, the density function of the EWFr model is expressed as a linear representation of Fr densities. Let Y be a random variable having the Fr distribution in (1.1). Hence, the rth ordinary, μr,Y, and incomplete moments, ϕ(r,Y)(t), of Y are, respectively, given (for r<λ, ) by

    μr,Y=λrθΓ(1rθ)andϕ(r,Y)(t)=λrθγ(1rθ,λtθ),

    where Γ(s)=0ws1ewdw is the complete gamma function (GF) and γ(s,z)=z0ws1ewdw is the lower incomplete GF.

    This section was devoted to deriving the rth ordinary moment and incomplete moments of the EWFr distribution.

    Proposition: Based on (3.4), the rth moment of the EWFr distribution is defined by

    μr=w,u=0ψw,u0xrgϑw+u(x)dxforrN.
    μr=w,u=0ψw,u(ϑw+u)rθΓ(1rθ). (3.5)

    Setting r=1 in Eq (3.5), we get the mean of x.

    The sth incomplete moment, say ϕs(x), of the EWFr distribution takes the form

    ϕs(t)=t0xsf(x)dx=w,u=0ψw,ut0xsg(ϑw+u)(x)dx.

    Then, we obtain (fors<θ)

    ϕs(t)=w,u=0ψw,u(ϑw+u)sθγ(1sθ,(ϑw+u)λtθ).

    The mean (μ), variance (σ2), skewness (ξ1(X)), and kurtosis (ξ2(X)) of the EWFr distribution are calculated numerically with λ=1 and different values of ϑ, φ and θ. Table 1 displays these numerical results. Table 1 shows that the EWFr model can be right-skewed and it can be leptokurtic (i.e., ξ2(X)>3).

    Table 1.  Some numerical values for μ, σ2, ξ1(X), and ξ2(X) of the EWFr distribution with λ=1 and different values of ϑ, φ and θ.
    η μ σ2 ξ1(X) ξ2(X)
    (ϑ=1.50,φ=0.50,θ=1.50) 1.3511 0.4752 3.1421 56.2021
    (ϑ=2.50,φ=0.75,θ=1.75) 1.2701 0.1329 1.9395 16.1410
    (ϑ=2.25,φ=1.00,θ=2.75) 1.1904 0.0780 2.2648 19.2907
    (ϑ=2.25,φ=0.25,θ=0.75) 1.6154 0.7600 1.6132 9.0569
    (ϑ=2.25,φ=1.25,θ=3.25) 1.1831 0.0747 2.8068 27.8064
    (ϑ=5.50,φ=1.50,θ=2.50) 1.1927 0.0223 1.7507 11.7806

     | Show Table
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    Let X1,X2,Xn be a random sample from the EWFr (2.4) and X1:nX2:nXn:n be their corresponding order statistics (OS). The PDF and the CDF of the of rth OS, say, Xr:n and 1rn are, respectively, defined by

    fr:n(x)=n!(nr)!(r1)![F(x)]r1[1F(x)]nrf(x)=n!(nr)!(r1)!nru=0(1)u(nru)[F(x)]r1+uf(x) (3.6)

    and (for k=1,2,,n)

    Fr:n(x)=nl=k(nl)[F(x)]l[1F(x)]nl=nl=knru=0(1)u(nl)(nru)[F(x)]l+u. (3.7)

    Using Eqs (3.6) and (3.7), the PDF and CDF of the rth OS of the EWFr reduce to

    fr:n(x)=ϑθλx(θ+1)n!(r1)!(nr)!eλtθ(eλxθ1)(ϑ+1){1+φ(eλxθ1)ϑ}(1φ+1)nru=0(1)u(nru)[1{1+φ(eλxθ1)ϑ}1φ]r+u1

    and

    Fr:n(x)=nl=knru=0(1)u(nl)(nru)[1{1+φ(eλxθ1)ϑ}1φ]l+u.

    In this section, the EWFr parameters ϑ, λ, φ and θ are estimated using different frequentist approaches. We also provide detailed simulation results to compare and order their performances using partial and overall ranks.

    The MLEs of the parameters ϑ, λ, φ and θ of the EWFr distribution are introduced in this sub-section. Let x1,,xn be a sample from the EWFr distribution in (2.4). Hence, the log-likelihood function of η=(ϑ,φ,λ,θ) takes the form

    l(η;x)=nlog(ϑ)+nlog(θ)+nlog(λ)(θ+1)ni=1log(xi)(ϑ+1)ni=1log(eλxiθ1)+λni=1xiθ(1φ+1)ni=1log{1+φ(eλxiθ1)ϑ}.

    The MLEs follow by maximizing the above equation by several programs such as {SAS} ({PROC NLMIXED}) or {R} ({optim} function).

    Let x(1), x(2), , x(n) be the OS of a random sample from the PDF (2.4), then the LSEs [19] of the EWFr parameters are obtained by minimizing the function:

    S(η)=ni=1[F(x(i))in+1]2.

    Similarly, these estimators are also obtained by solving the following equation (for k=1,2,3,4)

    ni=1({1+φ(eλxiθ1)ϑ}1φin+1)Ωk(x(i)|η)=0,

    where

    Ω1(x(i)|η)=ϑF(x(i)|η)=1φ(1+φwϑi)(1φ+1)φwϑilnwi,
    Ω2(x(i)|η)=φF(x(i)|η)=(1+φwϑi)1φln(1+φwϑi),
    Ω3(x(i)|η)=λF(x(i)|η)=1φ(1+φwϑi)(1φ+1)ϑφxθiw(ϑ+1)ieλxiθ

    and

    Ω4(x(i)|η)=θF(x(i)|η)=ϑλw(ϑ+1)ieλxiθxθi(1+φwϑi)(1φ+1)lnxi,

    where wi=eλxiθ1. The solution of Ωk for k=1,2,3,4 may be obtained numerically.

    The WLSEs of the EWFr parameters can be determined by minimizing the equation (see [19]):

    W(η)=ni=1(n+1)2(n+2)i(ni+1)[F(x(i)|η)in+1]2.

    The uniform spacings of a random sample from the EWFr distribution are defined (for i=1,2,,n+1) by {Di(η)=F(x(i)|η)F(x(i1)|η)}, where F(x(0)|η)=0, F(x(n+1)|η)=1 and n+1i=1Di(η)=1. The MPSEs of the EWFr parameters can be determined by maximizing the following geometric mean (GM) of spacings

    G(η)=[n+1i=1Di(η)]1n+1

    or by maximizing the logarithm of the GM of sample spacings

    H(η)=1n+1n+1i=1logDi(η),

    The CRVMEs can be obtained using the difference between the estimated and empirical CDFs. The CRVMEs [20] of the EWFr parameters are determined by minimizing

    C(η)=112n+ni=1[F(x(i)|η)2i12n]2.

    The ADEs [21] of the EWFr parameters are calculated by minimizing

    A(η)=n1nni=1(2i1)[logF(x(i)|η)+logS(x(i)|η)].

    The RADEs of the EWFr parameters are calculated by minimizing

    R(η)=n22ni=1F(xi:n|η)1nni=1(2i1)logS(xn+1i:n|η).

    Consider the unbiased estimator of F(x(i)|η) which is defined by ui=i/(n+1). Hence, the PCEs of the EWFr parameters can be calculated by minimizing

    P(η)=ni=1(x(i){ln([(1ui)φ1]1ϑφ1ϑ+[(1ui)φ1]1ϑ)λ}1θ)2.

    To compare and explore the behavior of different estimators of the EWFr parameters, we presented the numerical simulation results and ranked them with respect to their: average of absolute biases (|Bias(ˆη)|), |Bias(ˆη)|= 1NNi=1|ˆηη|, average of mean relative errors (MREs), MREs=1NNi=1|ˆηη|/η, and average mean square errors (MSEs), MSEs=1NNi=1(ˆηη)2.

    The following algorithm can be adopted to explore the behavior of different estimators of the EWFr parameters:

    Step 1: A random sample x1,x2,,xn of sizes n=20, 80, 200, and 500 are generated from the QF (3.1).

    Step 2: The required results are obtained based on eight combinations of the parameters ϑ={0.25,0.75,1.75,3.50,3.50}, φ={0.50,0.75,2.00,2.50,3.50}, λ={0.25,0.50,1.50,3.00,4.25} and θ={0.25,1.25,2.50}.

    Step 3: Each sample is replicated N=5,000 times.

    Step 4: Results of the biases, MSEs, and MREs are computed for the eight combinations, and to save more space, we present just the result of 5 combinations in Tables 26.

    Table 2.  Simulation results for η=(ϑ=1.75,φ=0.5,λ=0.25,θ=1.25).
    n Est. Est. Par. MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    20 |BIAS| ˆϑ 0.58150 {3} 0.59477 {4} 0.53422 {1} 0.54541 {2} 0.60555 {5} 0.71685 {8} 0.67445 {7} 0.61466 {6}
    ˆφ 0.47550 {4} 0.54812 {7} 0.46820 {2} 0.53093 {6} 0.19120 {1} 0.55104 {8} 0.46906 {3} 0.51894 {5}
    ˆλ 0.08930 {2} 0.10351 {7} 0.08402 {1} 0.10057 {5} 0.10077 {6} 0.11204 {8} 0.09758 {3} 0.09866 {4}
    ˆθ 0.49749 {7} 0.47497 {4} 0.46884 {3} 0.48364 {5} 0.45238 {1} 0.53285 {8} 0.46505 {2} 0.48608 {6}
    MSEs ˆϑ 0.47425 {2} 0.52401 {4} 0.52337 {3} 0.46463 {1} 0.54588 {6} 0.64689 {8} 0.59726 {7} 0.53428 {5}
    ˆφ 0.27624 {1} 0.38734 {7} 0.29294 {2} 0.36212 {6} 0.31849 {4} 0.39577 {8} 0.30160 {3} 0.35513 {5}
    ˆλ 0.01107 {2} 0.01423 {7} 0.00983 {1} 0.01356 {5} 0.01357 {6} 0.01651 {8} 0.01289 {3} 0.01296 {4}
    ˆθ 0.37764 {7} 0.33320 {3} 0.35778 {4} 0.36101 {5} 0.29381 {1} 0.38887 {8} 0.32193 {2} 0.36311 {6}
    MREs ˆϑ 0.33229 {3} 0.33987 {4} 0.17807 {1} 0.31166 {2} 0.34603 {5} 0.40963 {8} 0.38540 {7} 0.35123 {6}
    ˆφ 0.95101 {3} 1.09624 {7} 0.93641 {1} 1.06186 {6} 0.97231 {4} 1.10208 {8} 0.93811 {2} 1.03788 {5}
    ˆλ 0.35719 {2} 0.41405 {7} 0.33607 {1} 0.40230 {5} 0.40307 {6} 0.44817 {8} 0.39034 {3} 0.39464 {4}
    ˆθ 0.39799 {7} 0.37998 {4} 0.37507 {3} 0.38691 {5} 0.36190 {1} 0.42628 {8} 0.37204 {2} 0.38886 {6}
    Ranks 43 {2} 65 {7} 23 {1} 53 {5} 46 {4} 96 {8} 44 {3} 62 {6}
    80 |BIAS| ˆϑ 0.65720 {2} 0.73260 {6} 0.64523 {1} 0.71780 {4} 0.67014 {3} 0.78730 {8} 0.72979 {5} 0.78285 {7}
    ˆφ 0.29918 {4} 0.36951 {7} 0.27270 {1} 0.36572 {6} 0.28461 {2} 0.43485 {8} 0.29440 {3} 0.31911 {5}
    ˆλ 0.06946 {2} 0.08089 {7} 0.06755 {1} 0.07955 {6} 0.07162 {4} 0.07099 {3} 0.07301 {5} 0.08347 {8}
    ˆθ 0.41705 {6} 0.41605 {5} 0.41277 {4} 0.43216 {7} 0.34179 {1} 0.38656 {3} 0.37952 {2} 0.45183 {8}
    MSEs ˆϑ 0.53699 {1} 0.65792 {5} 0.71214 {7} 0.63722 {3} 0.62257 {2} 0.71659 {8} 0.64185 {4} 0.70948 {6}
    ˆφ 0.12478 {3} 0.19502 {7} 0.11097 {1} 0.18881 {6} 0.12320 {2} 0.28084 {8} 0.13150 {4} 0.15268 {5}
    ˆλ 0.00672 {1} 0.00884 {7} 0.00693 {2} 0.00853 {6} 0.00712 {4} 0.00711 {3} 0.00740 {5} 0.00932 {8}
    ˆθ 0.26049 {5} 0.25434 {4} 0.30456 {8} 0.27845 {6} 0.16695 {1} 0.24032 {3} 0.20942 {2} 0.29980 {7}
    MREs ˆϑ 0.37554 {2} 0.41863 {6} 0.21508 {1} 0.41017 {4} 0.38294 {3} 0.44989 {8} 0.41702 {5} 0.44734 {7}
    ˆφ 0.59835 {4} 0.73902 {7} 0.54540 {1} 0.73144 {6} 0.56922 {2} 0.86970 {8} 0.58881 {3} 0.63822 {5}
    ˆλ 0.27786 {2} 0.32356 {7} 0.27019 {1} 0.31820 {6} 0.28647 {4} 0.28396 {3} 0.29205 {5} 0.33388 {8}
    ˆθ 0.33364 {6} 0.33284 {5} 0.33022 {4} 0.34573 {7} 0.27343 {1} 0.30924 {3} 0.30361 {2} 0.36147 {8}
    Ranks 38 {3} 73 {7} 32 {2} 67 {6} 29 {1} 66 {5} 45 {4} 82 {8}
    200 |BIAS| ˆϑ 0.54244 {1} 0.74060 {6} 0.66029 {4} 0.72065 {5} 0.56860 {2} 0.78528 {8} 0.64417 {3} 0.74318 {7}
    ˆφ 0.20343 {3} 0.27714 {7} 0.18758 {1} 0.27628 {6} 0.19120 {2} 0.33648 {8} 0.21264 {4} 0.21990 {5}
    ˆλ 0.05329 {1} 0.07033 {7} 0.05985 {3} 0.06898 {6} 0.05669 {2} 0.05992 {4} 0.06059 {5} 0.07617 {8}
    ˆθ 0.30910 {2} 0.38666 {6} 0.37834 {5} 0.39240 {7} 0.26754 {1} 0.34697 {4} 0.32167 {3} 0.42492 {8}
    MSEs ˆϑ 0.39682 {1} 0.65105 {6} 0.72704 {8} 0.62292 {4} 0.51529 {2} 0.70871 {7} 0.53035 {3} 0.65051 {5}
    ˆφ 0.06226 {3} 0.11401 {7} 0.05424 {1} 0.11214 {6} 0.05643 {2} 0.18593 {8} 0.06927 {4} 0.07447 {5}
    ˆλ 0.00405 {1} 0.00665 {7} 0.00571 {5} 0.00644 {6} 0.00452 {2} 0.00513 {4} 0.00507 {3} 0.00753 {8}
    ˆθ 0.14395 {2} 0.20851 {5} 0.26568 {8} 0.22075 {6} 0.10322 {1} 0.19203 {4} 0.14560 {3} 0.25309 {7}
    MREs ˆϑ 0.30997 {2} 0.42320 {6} 0.22010 {1} 0.41180 {5} 0.32491 {3} 0.44873 {8} 0.36810 {4} 0.42468 {7}
    ˆφ 0.40685 {3} 0.55429 {7} 0.37516 {1} 0.55256 {6} 0.38240 {2} 0.67295 {8} 0.42528 {4} 0.43980 {5}
    ˆλ 0.21316 {1} 0.28134 {7} 0.23940 {3} 0.27593 {6} 0.22675 {2} 0.23969 {4} 0.24238 {5} 0.30470 {8}
    ˆθ 0.24728 {2} 0.30933 {6} 0.30267 {5} 0.31392 {7} 0.21403 {1} 0.27758 {4} 0.25734 {3} 0.33994 {8}
    Ranks 22 {1.5} 77 {7} 45 {4} 70 {5} 22 {1.5} 71 {6} 44 {3} 81 {8}
    500 |BIAS| ˆϑ 0.40816 {2} 0.63822 {6} 0.59712 {4} 0.62303 {5} 0.38723 {1} 0.72351 {8} 0.50869 {3} 0.64537 {7}
    ˆφ 0.13392 {3} 0.19775 {6} 0.12778 {1} 0.19966 {7} 0.13208 {2} 0.26446 {8} 0.14927 {4} 0.15660 {5}
    ˆλ 0.03902 {1} 0.05985 {7} 0.04987 {4} 0.05913 {6} 0.04014 {2} 0.05408 {5} 0.04806 {3} 0.06618 {8}
    ˆθ 0.21255 {2} 0.32416 {6} 0.31285 {5} 0.33146 {7} 0.18308 {1} 0.30762 {4} 0.24975 {3} 0.35803 {8}
    MSEs ˆϑ 0.24842 {1} 0.52025 {5} 0.58302 {7} 0.50041 {4} 0.33081 {2} 0.63280 {8} 0.37071 {3} 0.52827 {6}
    ˆφ 0.02762 {3} 0.05937 {6} 0.02573 {1} 0.06052 {7} 0.02727 {2} 0.12045 {8} 0.03399 {4} 0.03724 {5}
    ˆλ 0.00224 {1} 0.00478 {7} 0.00422 {5} 0.00470 {6} 0.00257 {2} 0.00402 {4} 0.00325 {3} 0.00569 {8}
    ˆθ 0.06777 {2} 0.14391 {5} 0.19157 {8} 0.15413 {6} 0.05743 {1} 0.14128 {4} 0.08776 {3} 0.17743 {7}
    MREs ˆϑ 0.23323 {3} 0.36470 {6} 0.19904 {1} 0.35602 {5} 0.22127 {2} 0.41343 {8} 0.29068 {4} 0.36879 {7}
    ˆφ 0.26784 {3} 0.39550 {6} 0.25556 {1} 0.39932 {7} 0.26417 {2} 0.52891 {8} 0.29853 {4} 0.31320 {5}
    ˆλ 0.15609 {1} 0.23939 {7} 0.19949 {4} 0.23651 {6} 0.16056 {2} 0.21632 {5} 0.19222 {3} 0.26474 {8}
    ˆθ 0.17004 {2} 0.25933 {6} 0.25028 {5} 0.26517 {7} 0.14646 {1} 0.24610 {4} 0.19980 {3} 0.28642 {8}
    Ranks 24 {2} 73 {5.5} 46 {4} 73 {5.5} 20 {1} 74 {7} 40 {3} 82 {8}

     | Show Table
    DownLoad: CSV
    Table 3.  Simulation results for η=(ϑ=1.75,φ=2,λ=1.5,θ=2.5).
    n Est. Est. Par. MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    20 |BIAS| ˆϑ 0.58249 {3} 0.53932 {1} 0.56241 {2} 0.61397 {5} 0.60739 {4} 0.82341 {8} 0.68123 {7} 0.66592 {6}
    ˆφ 0.70201 {2} 0.74992 {4} 0.71005 {3} 0.99334 {7} 0.41044 {1} 1.11769 {8} 0.88784 {5} 0.97457 {6}
    ˆλ 0.26246 {1} 0.28717 {3} 0.28400 {2} 0.42881 {5} 0.40138 {4} 0.64545 {8} 0.43589 {7} 0.43050 {6}
    ˆθ 0.83485 {6} 0.91523 {7} 0.92408 {8} 0.76222 {3} 0.77841 {4} 0.78092 {5} 0.74535 {1} 0.74828 {2}
    MSEs ˆϑ 0.45340 {3} 0.42087 {1} 0.44427 {2} 0.51220 {4} 0.51720 {5} 0.77654 {8} 0.58720 {7} 0.56968 {6}
    ˆφ 0.65182 {1} 0.75540 {3} 0.66110 {2} 1.25282 {7} 0.95641 {4} 1.49737 {8} 1.01553 {5} 1.19476 {6}
    ˆλ 0.07059 {1} 0.08751 {3} 0.08543 {2} 0.29909 {7} 0.24742 {4} 0.52940 {8} 0.29252 {6} 0.29154 {5}
    ˆθ 0.84612 {6} 1.00860 {8} 1.00532 {7} 0.71906 {3} 0.75325 {4} 0.82231 {5} 0.69565 {1} 0.70768 {2}
    MREs ˆϑ 0.33285 {3} 0.30818 {1} 0.32138 {2} 0.35084 {5} 0.34708 {4} 0.47052 {8} 0.38927 {7} 0.38052 {6}
    ˆφ 0.35100 {1} 0.37496 {3} 0.35503 {2} 0.49667 {7} 0.42863 {4} 0.55884 {8} 0.44392 {5} 0.48728 {6}
    ˆλ 0.17497 {1} 0.19145 {3} 0.18933 {2} 0.28587 {5} 0.26758 {4} 0.43030 {8} 0.29059 {7} 0.28700 {6}
    ˆθ 0.33394 {6} 0.36609 {7} 0.36963 {8} 0.30489 {3} 0.31136 {4} 0.31237 {5} 0.29814 {1} 0.29931 {2}
    Ranks 34 {1} 44 {3} 42 {2} 61 {7} 46 {4} 87 {8} 59 {5.5} 59 {5.5}
    80 |BIAS| ˆϑ 0.49925 {2} 0.47135 {1} 0.52766 {3} 0.66329 {5} 0.55966 {4} 0.89224 {8} 0.67228 {6} 0.69447 {7}
    ˆφ 0.52063 {1} 0.55025 {3} 0.52909 {2} 0.70683 {7} 0.56354 {4} 0.93582 {8} 0.63998 {5} 0.69954 {6}
    ˆλ 0.25198 {1} 0.25883 {3} 0.25641 {2} 0.43311 {7} 0.30034 {4} 0.66563 {8} 0.40607 {5} 0.43206 {6}
    ˆθ 0.78480 {6} 0.82532 {7} 0.83697 {8} 0.69063 {3} 0.58559 {1} 0.72122 {5} 0.63842 {2} 0.69164 {4}
    MSEs ˆϑ 0.31719 {2} 0.30026 {1} 0.34946 {3} 0.55815 {5} 0.49857 {4} 0.86629 {8} 0.56483 {6} 0.59417 {7}
    ˆφ 0.27881 {1} 0.32553 {3} 0.29109 {2} 0.66883 {7} 0.44978 {4} 1.03760 {8} 0.55511 {5} 0.64550 {6}
    ˆλ 0.06369 {1} 0.06795 {3} 0.06642 {2} 0.29117 {7} 0.15725 {4} 0.54984 {8} 0.25250 {5} 0.28331 {6}
    ˆθ 0.66344 {5} 0.73666 {7} 0.74889 {8} 0.58730 {3} 0.45144 {1} 0.66717 {6} 0.51377 {2} 0.59201 {4}
    MREs ˆϑ 0.28529 {2} 0.26934 {1} 0.30152 {3} 0.37902 {5} 0.31981 {4} 0.50985 {8} 0.38416 {6} 0.39684 {7}
    ˆφ 0.26032 {1} 0.27512 {3} 0.26454 {2} 0.35341 {7} 0.28177 {4} 0.46791 {8} 0.31999 {5} 0.34977 {6}
    ˆλ 0.16798 {1} 0.17255 {3} 0.17094 {2} 0.28874 {7} 0.20023 {4} 0.44375 {8} 0.27071 {5} 0.28804 {6}
    ˆθ 0.31392 {6} 0.33013 {7} 0.33479 {8} 0.27625 {3} 0.23423 {1} 0.28849 {5} 0.25537 {2} 0.27666 {4}
    Ranks 29 {1} 42 {3} 45 {4} 66 {6} 39 {2} 88 {8} 54 {5} 69 {7}
    200 |BIAS| ˆϑ 0.47555 {3} 0.44985 {2} 0.51341 {4} 0.67707 {6} 0.42436 {1} 0.89805 {8} 0.66134 {5} 0.69895 {7}
    ˆφ 0.50115 {2} 0.50837 {4} 0.50279 {3} 0.56296 {7} 0.41044 {1} 0.81679 {8} 0.51451 {5} 0.55936 {6}
    ˆλ 0.25019 {2} 0.25187 {4} 0.25076 {3} 0.41917 {7} 0.21499 {1} 0.65544 {8} 0.37297 {5} 0.41435 {6}
    ˆθ 0.79159 {6} 0.80107 {7} 0.82123 {8} 0.64647 {3} 0.43028 {1} 0.75308 {5} 0.57181 {2} 0.66234 {4}
    MSEs ˆϑ 0.25888 {2} 0.23847 {1} 0.29413 {3} 0.56097 {6} 0.37531 {4} 0.86783 {8} 0.54545 {5} 0.59107 {7}
    ˆφ 0.25134 {1} 0.26082 {4} 0.25349 {2} 0.43952 {7} 0.25968 {3} 0.80523 {8} 0.37160 {5} 0.43084 {6}
    ˆλ 0.06261 {1} 0.06361 {3} 0.06295 {2} 0.25891 {7} 0.09970 {4} 0.52619 {8} 0.20829 {5} 0.25203 {6}
    ˆθ 0.64670 {5} 0.66161 {6} 0.69240 {8} 0.51309 {3} 0.27527 {1} 0.68347 {7} 0.41304 {2} 0.53268 {4}
    MREs ˆϑ 0.27175 {3} 0.25705 {2} 0.29338 {4} 0.38690 {6} 0.24249 {1} 0.51317 {8} 0.37791 {5} 0.39940 {7}
    ˆφ 0.25057 {2} 0.25419 {4} 0.25139 {3} 0.28148 {7} 0.20522 {1} 0.40839 {8} 0.25725 {5} 0.27968 {6}
    ˆλ 0.16679 {2} 0.16791 {4} 0.16717 {3} 0.27945 {7} 0.14333 {1} 0.43696 {8} 0.24865 {5} 0.27623 {6}
    ˆθ 0.31664 {6} 0.32043 {7} 0.32849 {8} 0.25859 {3} 0.17211 {1} 0.30123 {5} 0.22872 {2} 0.26494 {4}
    Ranks 35 {2} 48 {3} 51 {4.5} 69 {6.5} 20 {1} 89 {8} 51 {4.5} 69 {6.5}
    500 |BIAS| ˆϑ 0.47314 {3} 0.44590 {2} 0.51215 {4} 0.64549 {6} 0.23589 {1} 0.89642 {8} 0.57765 {5} 0.66728 {7}
    ˆφ 0.50000 {5} 0.50031 {7} 0.50001 {6} 0.44580 {4} 0.25497 {1} 0.66140 {8} 0.39329 {2} 0.42269 {3}
    ˆλ 0.25000 {2} 0.25003 {4} 0.25001 {3} 0.38068 {6} 0.11500 {1} 0.63857 {8} 0.31593 {5} 0.38454 {7}
    ˆθ 0.79445 {5} 0.80134 {6} 0.82604 {8} 0.59243 {3} 0.25280 {1} 0.80505 {7} 0.49356 {2} 0.61821 {4}
    MSEs ˆϑ 0.23703 {3} 0.21187 {2} 0.27432 {4} 0.51809 {6} 0.19898 {1} 0.86166 {8} 0.44538 {5} 0.54549 {7}
    ˆφ 0.25000 {3} 0.25034 {5} 0.25001 {4} 0.28548 {7} 0.11705 {1} 0.56366 {8} 0.22462 {2} 0.25796 {6}
    ˆλ 0.06250 {2.5} 0.06252 {4} 0.06250 {2.5} 0.20888 {6} 0.03935 {1} 0.50179 {8} 0.14873 {5} 0.20922 {7}
    ˆθ 0.63903 {5} 0.64949 {6} 0.68943 {7} 0.43597 {3} 0.12546 {1} 0.74499 {8} 0.31912 {2} 0.46804 {4}
    MREs ˆϑ 0.27037 {3} 0.25480 {2} 0.29266 {4} 0.36885 {6} 0.13479 {1} 0.51224 {8} 0.33008 {5} 0.38130 {7}
    ˆφ 0.25000 {5.5} 0.25015 {7} 0.25000 {5.5} 0.22290 {4} 0.12748 {1} 0.33070 {8} 0.19665 {2} 0.21134 {3}
    ˆλ 0.16667 {2.5} 0.16669 {4} 0.16667 {2.5} 0.25379 {6} 0.07667 {1} 0.42571 {8} 0.21062 {5} 0.25636 {7}
    ˆθ 0.31778 {5} 0.32053 {6} 0.33042 {8} 0.23697 {3} 0.10112 {1} 0.32202 {7} 0.19742 {2} 0.24728 {4}
    Ranks 44.5 {3} 55 {4} 58.5 {5} 60 {6} 12 {1} 94 {8} 42 {2} 66 {7}

     | Show Table
    DownLoad: CSV
    Table 4.  Simulation results for η=(ϑ=3.5,φ=0.75,λ=0.5,θ=1.25).
    n Est. Est. Par. MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    20 |BIAS| ˆϑ 1.05821 {8} 0.62985 {3} 0.96882 {6} 0.61879 {2} 0.39728 {1} 1.00062 {7} 0.93184 {5} 0.74851 {4}
    ˆφ 0.58239 {4} 0.61540 {8} 0.57588 {3} 0.61442 {7} 0.16810 {1} 0.59648 {6} 0.54321 {2} 0.58344 {5}
    ˆλ 0.09205 {8} 0.08984 {5} 0.08749 {3} 0.09161 {6} 0.07490 {1} 0.09181 {7} 0.08360 {2} 0.08890 {4}
    ˆθ 0.65193 {8} 0.48317 {2} 0.52978 {5} 0.51841 {4} 0.37874 {1} 0.57738 {7} 0.51808 {3} 0.53685 {6}
    MSEs ˆϑ 1.62863 {8} 0.80009 {2} 1.26747 {6} 0.83422 {3} 0.44242 {1} 1.52407 {7} 1.26323 {5} 1.02485 {4}
    ˆφ 0.42299 {3} 0.47351 ^{\left\{8 \right\}} 0.43072 ^{\left\{4 \right\}} 0.47310 ^{\left\{7 \right\}} 0.39842 ^{\left\{2 \right\}} 0.45399 ^{\left\{6 \right\}} 0.39008 ^{\left\{1 \right\}} 0.43912 ^{\left\{5 \right\}}
    \hat{\lambda} 0.01191 ^{\left\{6 \right\}} 0.01157 ^{\left\{5 \right\}} 0.01104 ^{\left\{3 \right\}} 0.01199 ^{\left\{7 \right\}} 0.00839 ^{\left\{1 \right\}} 0.01226 ^{\left\{8 \right\}} 0.01037 ^{\left\{2 \right\}} 0.01130 ^{\left\{4 \right\}}
    \hat{\theta} 0.56633 ^{\left\{8 \right\}} 0.35145 ^{\left\{2 \right\}} 0.39993 ^{\left\{3 \right\}} 0.40530 ^{\left\{5 \right\}} 0.22597 ^{\left\{1 \right\}} 0.46238 ^{\left\{7 \right\}} 0.39998 ^{\left\{4 \right\}} 0.42492 ^{\left\{6 \right\}}
    MREs \hat{\vartheta} 0.30235 ^{\left\{8 \right\}} 0.17996 ^{\left\{3 \right\}} 0.27681 ^{\left\{6 \right\}} 0.17680 ^{\left\{2 \right\}} 0.11351 ^{\left\{1 \right\}} 0.28589 ^{\left\{7 \right\}} 0.26624 ^{\left\{5 \right\}} 0.21386 ^{\left\{4 \right\}}
    \hat{\varphi} 0.77652 ^{\left\{4 \right\}} 0.82054 ^{\left\{8 \right\}} 0.76784 ^{\left\{3 \right\}} 0.81923 ^{\left\{7 \right\}} 0.73001 ^{\left\{2 \right\}} 0.79531 ^{\left\{6 \right\}} 0.72428 ^{\left\{1 \right\}} 0.77792 ^{\left\{5 \right\}}
    \hat{\lambda} 0.18410 ^{\left\{8 \right\}} 0.17968 ^{\left\{5 \right\}} 0.17498 ^{\left\{3 \right\}} 0.18321 ^{\left\{6 \right\}} 0.14981 ^{\left\{1 \right\}} 0.18363 ^{\left\{7 \right\}} 0.16720 ^{\left\{2 \right\}} 0.17780 ^{\left\{4 \right\}}
    \hat{\theta} 0.52155 ^{\left\{8 \right\}} 0.38654 ^{\left\{2 \right\}} 0.42382 ^{\left\{5 \right\}} 0.41473 ^{\left\{4 \right\}} 0.30299 ^{\left\{1 \right\}} 0.46190 ^{\left\{7 \right\}} 0.41446 ^{\left\{3 \right\}} 0.42948 ^{\left\{6 \right\}}
    \sum{Ranks} {\textbf{81}} ^{\left\{7 \right\}} {\textbf{53}} ^{\left\{4 \right\}} {\textbf{50}} ^{\left\{3 \right\}} {\textbf{60}} ^{\left\{6 \right\}} {\textbf{14}} ^{\left\{1 \right\}} {\textbf{82}} ^{\left\{8 \right\}} {\textbf{35}} ^{\left\{2 \right\}} {\textbf{57}} ^{\left\{5 \right\}}
    80 |BIAS| \hat{\vartheta} 1.30458 ^{\left\{8 \right\}} 0.99944 ^{\left\{2 \right\}} 1.19014 ^{\left\{7 \right\}} 1.02885 ^{\left\{3 \right\}} 0.28553 ^{\left\{1 \right\}} 1.10670 ^{\left\{4 \right\}} 1.14568 ^{\left\{6 \right\}} 1.11457 ^{\left\{5 \right\}}
    \hat{\varphi} 0.32983 ^{\left\{3 \right\}} 0.40620 ^{\left\{6 \right\}} 0.34267 ^{\left\{4 \right\}} 0.40746 ^{\left\{7 \right\}} 0.27616 ^{\left\{1 \right\}} 0.42471 ^{\left\{8 \right\}} 0.32604 ^{\left\{2 \right\}} 0.35934 ^{\left\{5 \right\}}
    \hat{\lambda} 0.06496 ^{\left\{7 \right\}} 0.06255 ^{\left\{5 \right\}} 0.05976 ^{\left\{3 \right\}} 0.06558 ^{\left\{8 \right\}} 0.03810 ^{\left\{1 \right\}} 0.06030 ^{\left\{4 \right\}} 0.05724 ^{\left\{2 \right\}} 0.06303 ^{\left\{6 \right\}}
    \hat{\theta} 0.60157 ^{\left\{8 \right\}} 0.45112 ^{\left\{2 \right\}} 0.47825 ^{\left\{5 \right\}} 0.49541 ^{\left\{6 \right\}} 0.19099 ^{\left\{1 \right\}} 0.45370 ^{\left\{3 \right\}} 0.45453 ^{\left\{4 \right\}} 0.50033 ^{\left\{7 \right\}}
    MSEs \hat{\vartheta} 1.98067 ^{\left\{8 \right\}} 1.42246 ^{\left\{2 \right\}} 1.62721 ^{\left\{7 \right\}} 1.51028 ^{\left\{3 \right\}} 0.28600 ^{\left\{1 \right\}} 1.54773 ^{\left\{5 \right\}} 1.54350 ^{\left\{4 \right\}} 1.62460 ^{\left\{6 \right\}}
    \hat{\varphi} 0.16347 ^{\left\{2 \right\}} 0.24145 ^{\left\{7 \right\}} 0.17842 ^{\left\{4 \right\}} 0.24070 ^{\left\{6 \right\}} 0.12275 ^{\left\{1 \right\}} 0.27309 ^{\left\{8 \right\}} 0.16427 ^{\left\{3 \right\}} 0.19753 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00614 ^{\left\{7 \right\}} 0.00590 ^{\left\{5 \right\}} 0.00549 ^{\left\{3 \right\}} 0.00646 ^{\left\{8 \right\}} 0.00224 ^{\left\{1 \right\}} 0.00582 ^{\left\{4 \right\}} 0.00513 ^{\left\{2 \right\}} 0.00600 ^{\left\{6 \right\}}
    \hat{\theta} 0.50150 ^{\left\{8 \right\}} 0.33442 ^{\left\{3 \right\}} 0.35764 ^{\left\{5 \right\}} 0.39078 ^{\left\{6 \right\}} 0.06108 ^{\left\{1 \right\}} 0.33595 ^{\left\{4 \right\}} 0.33240 ^{\left\{2 \right\}} 0.39877 ^{\left\{7 \right\}}
    MREs \hat{\vartheta} 0.37274 ^{\left\{8 \right\}} 0.28555 ^{\left\{2 \right\}} 0.34004 ^{\left\{7 \right\}} 0.29396 ^{\left\{3 \right\}} 0.08158 ^{\left\{1 \right\}} 0.31620 ^{\left\{4 \right\}} 0.32734 ^{\left\{6 \right\}} 0.31845 ^{\left\{5 \right\}}
    \hat{\varphi} 0.43977 ^{\left\{3 \right\}} 0.54161 ^{\left\{6 \right\}} 0.45690 ^{\left\{4 \right\}} 0.54328 ^{\left\{7 \right\}} 0.36821 ^{\left\{1 \right\}} 0.56628 ^{\left\{8 \right\}} 0.43472 ^{\left\{2 \right\}} 0.47912 ^{\left\{5 \right\}}
    \hat{\lambda} 0.12992 ^{\left\{7 \right\}} 0.12509 ^{\left\{5 \right\}} 0.11952 ^{\left\{3 \right\}} 0.13116 ^{\left\{8 \right\}} 0.07620 ^{\left\{1 \right\}} 0.12061 ^{\left\{4 \right\}} 0.11448 ^{\left\{2 \right\}} 0.12607 ^{\left\{6 \right\}}
    \hat{\theta} 0.48126 ^{\left\{8 \right\}} 0.36089 ^{\left\{2 \right\}} 0.38260 ^{\left\{5 \right\}} 0.39633 ^{\left\{6 \right\}} 0.15279 ^{\left\{1 \right\}} 0.36296 ^{\left\{3 \right\}} 0.36362 ^{\left\{4 \right\}} 0.40027 ^{\left\{7 \right\}}
    \sum{Ranks} {\textbf{77}} ^{\left\{8 \right\}} {\textbf{47}} ^{\left\{3 \right\}} {\textbf{57}} ^{\left\{4 \right\}} {\textbf{71}} ^{\left\{7 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{59}} ^{\left\{5 \right\}} {\textbf{39}} ^{\left\{2 \right\}} {\textbf{70}} ^{\left\{6 \right\}}
    200 |BIAS| \hat{\vartheta} 1.18071 ^{\left\{8 \right\}} 1.13329 ^{\left\{4 \right\}} 1.15680 ^{\left\{6 \right\}} 1.15101 ^{\left\{5 \right\}} 0.12881 ^{\left\{1 \right\}} 1.09310 ^{\left\{2 \right\}} 1.11947 ^{\left\{3 \right\}} 1.17399 ^{\left\{7 \right\}}
    \hat{\varphi} 0.21288 ^{\left\{2 \right\}} 0.27282 ^{\left\{6 \right\}} 0.22827 ^{\left\{4 \right\}} 0.28207 ^{\left\{7 \right\}} 0.16810 ^{\left\{1 \right\}} 0.31936 ^{\left\{8 \right\}} 0.21687 ^{\left\{3 \right\}} 0.23691 ^{\left\{5 \right\}}
    \hat{\lambda} 0.05455 ^{\left\{5 \right\}} 0.05483 ^{\left\{6 \right\}} 0.05139 ^{\left\{4 \right\}} 0.05648 ^{\left\{8 \right\}} 0.02373 ^{\left\{1 \right\}} 0.04586 ^{\left\{2 \right\}} 0.05000 ^{\left\{3 \right\}} 0.05607 ^{\left\{7 \right\}}
    \hat{\theta} 0.50995 ^{\left\{8 \right\}} 0.46810 ^{\left\{5 \right\}} 0.45161 ^{\left\{4 \right\}} 0.48892 ^{\left\{7 \right\}} 0.11088 ^{\left\{1 \right\}} 0.36948 ^{\left\{2 \right\}} 0.42847 ^{\left\{3 \right\}} 0.48519 ^{\left\{6 \right\}}
    MSEs \hat{\vartheta} 1.65210 ^{\left\{6 \right\}} 1.59933 ^{\left\{5 \right\}} 1.54359 ^{\left\{4 \right\}} 1.65457 ^{\left\{7 \right\}} 0.11230 ^{\left\{1 \right\}} 1.41356 ^{\left\{2 \right\}} 1.45126 ^{\left\{3 \right\}} 1.65710 ^{\left\{8 \right\}}
    \hat{\varphi} 0.06995 ^{\left\{2 \right\}} 0.11564 ^{\left\{6 \right\}} 0.08167 ^{\left\{4 \right\}} 0.12209 ^{\left\{7 \right\}} 0.04607 ^{\left\{1 \right\}} 0.16683 ^{\left\{8 \right\}} 0.07397 ^{\left\{3 \right\}} 0.08772 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00441 ^{\left\{5 \right\}} 0.00457 ^{\left\{6 \right\}} 0.00403 ^{\left\{4 \right\}} 0.00483 ^{\left\{8 \right\}} 0.00088 ^{\left\{1 \right\}} 0.00341 ^{\left\{2 \right\}} 0.00386 ^{\left\{3 \right\}} 0.00477 ^{\left\{7 \right\}}
    \hat{\theta} 0.38578 ^{\left\{8 \right\}} 0.35447 ^{\left\{5 \right\}} 0.32071 ^{\left\{4 \right\}} 0.38130 ^{\left\{7 \right\}} 0.02076 ^{\left\{1 \right\}} 0.24604 ^{\left\{2 \right\}} 0.29346 ^{\left\{3 \right\}} 0.38069 ^{\left\{6 \right\}}
    MREs \hat{\vartheta} 0.33734 ^{\left\{8 \right\}} 0.32380 ^{\left\{4 \right\}} 0.33052 ^{\left\{6 \right\}} 0.32886 ^{\left\{5 \right\}} 0.03680 ^{\left\{1 \right\}} 0.31232 ^{\left\{2 \right\}} 0.31985 ^{\left\{3 \right\}} 0.33543 ^{\left\{7 \right\}}
    \hat{\varphi} 0.28384 ^{\left\{2 \right\}} 0.36376 ^{\left\{6 \right\}} 0.30437 ^{\left\{4 \right\}} 0.37610 ^{\left\{7 \right\}} 0.22413 ^{\left\{1 \right\}} 0.42582 ^{\left\{8 \right\}} 0.28917 ^{\left\{3 \right\}} 0.31587 ^{\left\{5 \right\}}
    \hat{\lambda} 0.10910 ^{\left\{5 \right\}} 0.10967 ^{\left\{6 \right\}} 0.10278 ^{\left\{4 \right\}} 0.11295 ^{\left\{8 \right\}} 0.04745 ^{\left\{1 \right\}} 0.09173 ^{\left\{2 \right\}} 0.10000 ^{\left\{3 \right\}} 0.11214 ^{\left\{7 \right\}}
    \hat{\theta} 0.40796 ^{\left\{8 \right\}} 0.37448 ^{\left\{5 \right\}} 0.36129 ^{\left\{4 \right\}} 0.39114 ^{\left\{7 \right\}} 0.08871 ^{\left\{1 \right\}} 0.29559 ^{\left\{2 \right\}} 0.34277 ^{\left\{3 \right\}} 0.38815 ^{\left\{6 \right\}}
    \sum{Ranks} {\textbf{67}} ^{\left\{6 \right\}} {\textbf{64}} ^{\left\{5 \right\}} {\textbf{52}} ^{\left\{4 \right\}} {\textbf{83}} ^{\left\{8 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{42}} ^{\left\{3 \right\}} {\textbf{36}} ^{\left\{2 \right\}} {\textbf{76}} ^{\left\{7 \right\}}
    500 |BIAS| \hat{\vartheta} 0.99609 ^{\left\{2 \right\}} 1.12481 ^{\left\{6 \right\}} 1.05940 ^{\left\{5 \right\}} 1.12860 ^{\left\{7 \right\}} 0.04256 ^{\left\{1 \right\}} 1.04542 ^{\left\{4 \right\}} 1.03887 ^{\left\{3 \right\}} 1.14079 ^{\left\{8 \right\}}
    \hat{\varphi} 0.14496 ^{\left\{2 \right\}} 0.18941 ^{\left\{6 \right\}} 0.15844 ^{\left\{4 \right\}} 0.19306 ^{\left\{7 \right\}} 0.10411 ^{\left\{1 \right\}} 0.23525 ^{\left\{8 \right\}} 0.15349 ^{\left\{3 \right\}} 0.16453 ^{\left\{5 \right\}}
    \hat{\lambda} 0.04309 ^{\left\{3 \right\}} 0.05010 ^{\left\{7 \right\}} 0.04425 ^{\left\{5 \right\}} 0.04998 ^{\left\{6 \right\}} 0.01474 ^{\left\{1 \right\}} 0.03603 ^{\left\{2 \right\}} 0.04334 ^{\left\{4 \right\}} 0.05109 ^{\left\{8 \right\}}
    \hat{\theta} 0.38900 ^{\left\{4 \right\}} 0.44670 ^{\left\{6 \right\}} 0.39875 ^{\left\{5 \right\}} 0.45266 ^{\left\{7 \right\}} 0.06374 ^{\left\{1 \right\}} 0.31824 ^{\left\{2 \right\}} 0.38560 ^{\left\{3 \right\}} 0.45867 ^{\left\{8 \right\}}
    MSEs \hat{\vartheta} 1.21294 ^{\left\{2 \right\}} 1.50352 ^{\left\{6 \right\}} 1.31440 ^{\left\{5 \right\}} 1.52047 ^{\left\{8 \right\}} 0.02893 ^{\left\{1 \right\}} 1.25338 ^{\left\{3 \right\}} 1.26686 ^{\left\{4 \right\}} 1.51668 ^{\left\{7 \right\}}
    \hat{\varphi} 0.03263 ^{\left\{2 \right\}} 0.05612 ^{\left\{6 \right\}} 0.03902 ^{\left\{4 \right\}} 0.05818 ^{\left\{7 \right\}} 0.01736 ^{\left\{1 \right\}} 0.09221 ^{\left\{8 \right\}} 0.03639 ^{\left\{3 \right\}} 0.04120 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00278 ^{\left\{3 \right\}} 0.00378 ^{\left\{6.5 \right\}} 0.00295 ^{\left\{5 \right\}} 0.00378 ^{\left\{6.5 \right\}} 0.00034 ^{\left\{1 \right\}} 0.00220 ^{\left\{2 \right\}} 0.00283 ^{\left\{4 \right\}} 0.00400 ^{\left\{8 \right\}}
    \hat{\theta} 0.23678 ^{\left\{4 \right\}} 0.31580 ^{\left\{6 \right\}} 0.25000 ^{\left\{5 \right\}} 0.32430 ^{\left\{7 \right\}} 0.00703 ^{\left\{1 \right\}} 0.18536 ^{\left\{2 \right\}} 0.23280 ^{\left\{3 \right\}} 0.33477 ^{\left\{8 \right\}}
    MREs \hat{\vartheta} 0.28460 ^{\left\{2 \right\}} 0.32137 ^{\left\{6 \right\}} 0.30269 ^{\left\{5 \right\}} 0.32246 ^{\left\{7 \right\}} 0.01216 ^{\left\{1 \right\}} 0.29869 ^{\left\{4 \right\}} 0.29682 ^{\left\{3 \right\}} 0.32594 ^{\left\{8 \right\}}
    \hat{\varphi} 0.19328 ^{\left\{2 \right\}} 0.25255 ^{\left\{6 \right\}} 0.21126 ^{\left\{4 \right\}} 0.25741 ^{\left\{7 \right\}} 0.13881 ^{\left\{1 \right\}} 0.31367 ^{\left\{8 \right\}} 0.20466 ^{\left\{3 \right\}} 0.21938 ^{\left\{5 \right\}}
    \hat{\lambda} 0.08617 ^{\left\{3 \right\}} 0.10020 ^{\left\{7 \right\}} 0.08850 ^{\left\{5 \right\}} 0.09997 ^{\left\{6 \right\}} 0.02948 ^{\left\{1 \right\}} 0.07207 ^{\left\{2 \right\}} 0.08669 ^{\left\{4 \right\}} 0.10217 ^{\left\{8 \right\}}
    \hat{\theta} 0.31120 ^{\left\{4 \right\}} 0.35736 ^{\left\{6 \right\}} 0.31900 ^{\left\{5 \right\}} 0.36213 ^{\left\{7 \right\}} 0.05100 ^{\left\{1 \right\}} 0.25459 ^{\left\{2 \right\}} 0.30848 ^{\left\{3 \right\}} 0.36694 ^{\left\{8 \right\}}
    \sum{Ranks} {\textbf{33}} ^{\left\{2 \right\}} {\textbf{74.5}} ^{\left\{6 \right\}} {\textbf{57}} ^{\left\{5 \right\}} {\textbf{82.5}} ^{\left\{7 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{47}} ^{\left\{4 \right\}} {\textbf{40}} ^{\left\{3 \right\}} {\textbf{86}} ^{\left\{8 \right\}}

     | Show Table
    DownLoad: CSV
    Table 5.  Simulation results for \boldsymbol{\eta} = (\vartheta = 3.5, \varphi = 2 , \lambda = 1.5 , \theta = 2.5 )^{\intercal} .
    n Est. Est. Par. MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    20 |BIAS| \hat{\vartheta} 0.98923 ^{\left\{7 \right\}} 0.64331 ^{\left\{3 \right\}} 0.95672 ^{\left\{6 \right\}} 0.63413 ^{\left\{2 \right\}} 0.44818 ^{\left\{1 \right\}} 1.04755 ^{\left\{8 \right\}} 0.90857 ^{\left\{5 \right\}} 0.78916 ^{\left\{4 \right\}}
    \hat{\varphi} 0.95367 ^{\left\{6 \right\}} 0.90318 ^{\left\{4 \right\}} 0.88553 ^{\left\{3 \right\}} 0.95450 ^{\left\{7 \right\}} 0.31253 ^{\left\{1 \right\}} 0.97463 ^{\left\{8 \right\}} 0.85825 ^{\left\{2 \right\}} 0.93652 ^{\left\{5 \right\}}
    \hat{\lambda} 0.50387 ^{\left\{8 \right\}} 0.29370 ^{\left\{2 \right\}} 0.38814 ^{\left\{5 \right\}} 0.31558 ^{\left\{3 \right\}} 0.23477 ^{\left\{1 \right\}} 0.41787 ^{\left\{7 \right\}} 0.38863 ^{\left\{6 \right\}} 0.36144 ^{\left\{4 \right\}}
    \hat{\theta} 0.83605 ^{\left\{8 \right\}} 0.71444 ^{\left\{3 \right\}} 0.81238 ^{\left\{7 \right\}} 0.68991 ^{\left\{2 \right\}} 0.62151 ^{\left\{1 \right\}} 0.74404 ^{\left\{5 \right\}} 0.75604 ^{\left\{6 \right\}} 0.71561 ^{\left\{4 \right\}}
    MSEs \hat{\vartheta} 1.35323 ^{\left\{7 \right\}} 0.71389 ^{\left\{2 \right\}} 1.18225 ^{\left\{6 \right\}} 0.73718 ^{\left\{3 \right\}} 0.37586 ^{\left\{1 \right\}} 1.57224 ^{\left\{8 \right\}} 1.13154 ^{\left\{5 \right\}} 1.02701 ^{\left\{4 \right\}}
    \hat{\varphi} 1.18857 ^{\left\{8 \right\}} 1.06788 ^{\left\{4 \right\}} 1.02750 ^{\left\{3 \right\}} 1.18599 ^{\left\{7 \right\}} 0.87512 ^{\left\{1 \right\}} 1.15778 ^{\left\{6 \right\}} 0.96462 ^{\left\{2 \right\}} 1.13400 ^{\left\{5 \right\}}
    \hat{\lambda} 0.36432 ^{\left\{8 \right\}} 0.14714 ^{\left\{2 \right\}} 0.22539 ^{\left\{5 \right\}} 0.17712 ^{\left\{3 \right\}} 0.09172 ^{\left\{1 \right\}} 0.28638 ^{\left\{7 \right\}} 0.23923 ^{\left\{6 \right\}} 0.22267 ^{\left\{4 \right\}}
    \hat{\theta} 0.77865 ^{\left\{8 \right\}} 0.64926 ^{\left\{4 \right\}} 0.77561 ^{\left\{7 \right\}} 0.60519 ^{\left\{2 \right\}} 0.52925 ^{\left\{1 \right\}} 0.67762 ^{\left\{5 \right\}} 0.68866 ^{\left\{6 \right\}} 0.64046 ^{\left\{3 \right\}}
    MREs \hat{\vartheta} 0.28264 ^{\left\{7 \right\}} 0.18380 ^{\left\{3 \right\}} 0.27335 ^{\left\{6 \right\}} 0.18118 ^{\left\{2 \right\}} 0.12805 ^{\left\{1 \right\}} 0.29930 ^{\left\{8 \right\}} 0.25959 ^{\left\{5 \right\}} 0.22547 ^{\left\{4 \right\}}
    \hat{\varphi} 0.47683 ^{\left\{6 \right\}} 0.45159 ^{\left\{4 \right\}} 0.44276 ^{\left\{3 \right\}} 0.47725 ^{\left\{7 \right\}} 0.40539 ^{\left\{1 \right\}} 0.48731 ^{\left\{8 \right\}} 0.42912 ^{\left\{2 \right\}} 0.46826 ^{\left\{5 \right\}}
    \hat{\lambda} 0.33591 ^{\left\{8 \right\}} 0.19580 ^{\left\{2 \right\}} 0.25876 ^{\left\{5 \right\}} 0.21038 ^{\left\{3 \right\}} 0.15651 ^{\left\{1 \right\}} 0.27858 ^{\left\{7 \right\}} 0.25908 ^{\left\{6 \right\}} 0.24096 ^{\left\{4 \right\}}
    \hat{\theta} 0.33442 ^{\left\{8 \right\}} 0.28578 ^{\left\{3 \right\}} 0.32495 ^{\left\{7 \right\}} 0.27596 ^{\left\{2 \right\}} 0.24860 ^{\left\{1 \right\}} 0.29762 ^{\left\{5 \right\}} 0.30242 ^{\left\{6 \right\}} 0.28624 ^{\left\{4 \right\}}
    \sum{Ranks} {\textbf{89}} ^{\left\{8 \right\}} {\textbf{36}} ^{\left\{2 \right\}} {\textbf{63}} ^{\left\{6 \right\}} {\textbf{43}} ^{\left\{3 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{82}} ^{\left\{7 \right\}} {\textbf{57}} ^{\left\{5 \right\}} {\textbf{50}} ^{\left\{4 \right\}}
    80 |BIAS| \hat{\vartheta} 1.00512 ^{\left\{8 \right\}} 0.76116 ^{\left\{3 \right\}} 0.98814 ^{\left\{7 \right\}} 0.76068 ^{\left\{2 \right\}} 0.22490 ^{\left\{1 \right\}} 0.94177 ^{\left\{5 \right\}} 0.95845 ^{\left\{6 \right\}} 0.83406 ^{\left\{4 \right\}}
    \hat{\varphi} 0.56247 ^{\left\{3 \right\}} 0.64453 ^{\left\{6 \right\}} 0.57353 ^{\left\{4 \right\}} 0.64522 ^{\left\{7 \right\}} 0.46925 ^{\left\{1 \right\}} 0.76277 ^{\left\{8 \right\}} 0.55915 ^{\left\{2 \right\}} 0.63949 ^{\left\{5 \right\}}
    \hat{\lambda} 0.45485 ^{\left\{8 \right\}} 0.31115 ^{\left\{2 \right\}} 0.36895 ^{\left\{6 \right\}} 0.33000 ^{\left\{3 \right\}} 0.11306 ^{\left\{1 \right\}} 0.39112 ^{\left\{7 \right\}} 0.36093 ^{\left\{5 \right\}} 0.34405 ^{\left\{4 \right\}}
    \hat{\theta} 0.76702 ^{\left\{8 \right\}} 0.62063 ^{\left\{3 \right\}} 0.68635 ^{\left\{7 \right\}} 0.62598 ^{\left\{4 \right\}} 0.33066 ^{\left\{1 \right\}} 0.60384 ^{\left\{2 \right\}} 0.66063 ^{\left\{6 \right\}} 0.63130 ^{\left\{5 \right\}}
    MSEs \hat{\vartheta} 1.24539 ^{\left\{7 \right\}} 0.92842 ^{\left\{2 \right\}} 1.16588 ^{\left\{6 \right\}} 0.94580 ^{\left\{3 \right\}} 0.13919 ^{\left\{1 \right\}} 1.25646 ^{\left\{8 \right\}} 1.12647 ^{\left\{5 \right\}} 1.05555 ^{\left\{4 \right\}}
    \hat{\varphi} 0.45689 ^{\left\{3 \right\}} 0.57098 ^{\left\{6 \right\}} 0.46410 ^{\left\{4 \right\}} 0.57244 ^{\left\{7 \right\}} 0.32482 ^{\left\{1 \right\}} 0.71835 ^{\left\{8 \right\}} 0.44181 ^{\left\{2 \right\}} 0.55971 ^{\left\{5 \right\}}
    \hat{\lambda} 0.28629 ^{\left\{8 \right\}} 0.17260 ^{\left\{2 \right\}} 0.20504 ^{\left\{5 \right\}} 0.19582 ^{\left\{3 \right\}} 0.02220 ^{\left\{1 \right\}} 0.25122 ^{\left\{7 \right\}} 0.20232 ^{\left\{4 \right\}} 0.20735 ^{\left\{6 \right\}}
    \hat{\theta} 0.68706 ^{\left\{8 \right\}} 0.51170 ^{\left\{3 \right\}} 0.58072 ^{\left\{7 \right\}} 0.52071 ^{\left\{4 \right\}} 0.16747 ^{\left\{1 \right\}} 0.49400 ^{\left\{2 \right\}} 0.55280 ^{\left\{6 \right\}} 0.52733 ^{\left\{5 \right\}}
    MREs \hat{\vartheta} 0.28718 ^{\left\{8 \right\}} 0.21747 ^{\left\{3 \right\}} 0.28233 ^{\left\{7 \right\}} 0.21734 ^{\left\{2 \right\}} 0.06426 ^{\left\{1 \right\}} 0.26908 ^{\left\{5 \right\}} 0.27384 ^{\left\{6 \right\}} 0.23830 ^{\left\{4 \right\}}
    \hat{\varphi} 0.28123 ^{\left\{3 \right\}} 0.32226 ^{\left\{6 \right\}} 0.28677 ^{\left\{4 \right\}} 0.32261 ^{\left\{7 \right\}} 0.23462 ^{\left\{1 \right\}} 0.38138 ^{\left\{8 \right\}} 0.27957 ^{\left\{2 \right\}} 0.31974 ^{\left\{5 \right\}}
    \hat{\lambda} 0.30323 ^{\left\{8 \right\}} 0.20744 ^{\left\{2 \right\}} 0.24597 ^{\left\{6 \right\}} 0.22000 ^{\left\{3 \right\}} 0.07538 ^{\left\{1 \right\}} 0.26075 ^{\left\{7 \right\}} 0.24062 ^{\left\{5 \right\}} 0.22937 ^{\left\{4 \right\}}
    \hat{\theta} 0.30681 ^{\left\{8 \right\}} 0.24825 ^{\left\{3 \right\}} 0.27454 ^{\left\{7 \right\}} 0.25039 ^{\left\{4 \right\}} 0.13226 ^{\left\{1 \right\}} 0.24153 ^{\left\{2 \right\}} 0.26425 ^{\left\{6 \right\}} 0.25252 ^{\left\{5 \right\}}
    \sum{Ranks} {\textbf{80}} ^{\left\{8 \right\}} {\textbf{41}} ^{\left\{2 \right\}} {\textbf{70}} ^{\left\{7 \right\}} {\textbf{49}} ^{\left\{3 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{69}} ^{\left\{6 \right\}} {\textbf{55}} ^{\left\{4 \right\}} {\textbf{56}} ^{\left\{5 \right\}}
    200 |BIAS| \hat{\vartheta} 0.98460 ^{\left\{6 \right\}} 0.86500 ^{\left\{3 \right\}} 1.00674 ^{\left\{7 \right\}} 0.86298 ^{\left\{2 \right\}} 0.12154 ^{\left\{1 \right\}} 1.05269 ^{\left\{8 \right\}} 0.98185 ^{\left\{5 \right\}} 0.89235 ^{\left\{4 \right\}}
    \hat{\varphi} 0.38859 ^{\left\{2 \right\}} 0.45911 ^{\left\{5 \right\}} 0.41129 ^{\left\{4 \right\}} 0.46722 ^{\left\{6 \right\}} 0.31253 ^{\left\{1 \right\}} 0.67732 ^{\left\{8 \right\}} 0.40329 ^{\left\{3 \right\}} 0.46920 ^{\left\{7 \right\}}
    \hat{\lambda} 0.39873 ^{\left\{8 \right\}} 0.31023 ^{\left\{2 \right\}} 0.35370 ^{\left\{6 \right\}} 0.32546 ^{\left\{3 \right\}} 0.06881 ^{\left\{1 \right\}} 0.37938 ^{\left\{7 \right\}} 0.34126 ^{\left\{5 \right\}} 0.32900 ^{\left\{4 \right\}}
    \hat{\theta} 0.68985 ^{\left\{8 \right\}} 0.57483 ^{\left\{3 \right\}} 0.64129 ^{\left\{7 \right\}} 0.59868 ^{\left\{5 \right\}} 0.21029 ^{\left\{1 \right\}} 0.55195 ^{\left\{2 \right\}} 0.61763 ^{\left\{6 \right\}} 0.59808 ^{\left\{4 \right\}}
    MSEs \hat{\vartheta} 1.11626 ^{\left\{6 \right\}} 1.01791 ^{\left\{2 \right\}} 1.13048 ^{\left\{7 \right\}} 1.02064 ^{\left\{3 \right\}} 0.05498 ^{\left\{1 \right\}} 1.30905 ^{\left\{8 \right\}} 1.09868 ^{\left\{5 \right\}} 1.05550 ^{\left\{4 \right\}}
    \hat{\varphi} 0.23053 ^{\left\{2 \right\}} 0.31234 ^{\left\{5 \right\}} 0.25573 ^{\left\{4 \right\}} 0.32276 ^{\left\{6 \right\}} 0.15678 ^{\left\{1 \right\}} 0.58268 ^{\left\{8 \right\}} 0.24649 ^{\left\{3 \right\}} 0.32421 ^{\left\{7 \right\}}
    \hat{\lambda} 0.22103 ^{\left\{7 \right\}} 0.16583 ^{\left\{2 \right\}} 0.18036 ^{\left\{5 \right\}} 0.17985 ^{\left\{4 \right\}} 0.00837 ^{\left\{1 \right\}} 0.22479 ^{\left\{8 \right\}} 0.17270 ^{\left\{3 \right\}} 0.18259 ^{\left\{6 \right\}}
    \hat{\theta} 0.58585 ^{\left\{8 \right\}} 0.45832 ^{\left\{3 \right\}} 0.51809 ^{\left\{7 \right\}} 0.48976 ^{\left\{5 \right\}} 0.07171 ^{\left\{1 \right\}} 0.44322 ^{\left\{2 \right\}} 0.49209 ^{\left\{6 \right\}} 0.48968 ^{\left\{4 \right\}}
    MREs \hat{\vartheta} 0.28132 ^{\left\{6 \right\}} 0.24714 ^{\left\{3 \right\}} 0.28764 ^{\left\{7 \right\}} 0.24657 ^{\left\{2 \right\}} 0.03472 ^{\left\{1 \right\}} 0.30077 ^{\left\{8 \right\}} 0.28053 ^{\left\{5 \right\}} 0.25496 ^{\left\{4 \right\}}
    \hat{\varphi} 0.19429 ^{\left\{2 \right\}} 0.22956 ^{\left\{5 \right\}} 0.20564 ^{\left\{4 \right\}} 0.23361 ^{\left\{6 \right\}} 0.15627 ^{\left\{1 \right\}} 0.33866 ^{\left\{8 \right\}} 0.20165 ^{\left\{3 \right\}} 0.23460 ^{\left\{7 \right\}}
    \hat{\lambda} 0.26582 ^{\left\{8 \right\}} 0.20682 ^{\left\{2 \right\}} 0.23580 ^{\left\{6 \right\}} 0.21697 ^{\left\{3 \right\}} 0.04587 ^{\left\{1 \right\}} 0.25292 ^{\left\{7 \right\}} 0.22751 ^{\left\{5 \right\}} 0.21933 ^{\left\{4 \right\}}
    \hat{\theta} 0.27594 ^{\left\{8 \right\}} 0.22993 ^{\left\{3 \right\}} 0.25652 ^{\left\{7 \right\}} 0.23947 ^{\left\{5 \right\}} 0.08412 ^{\left\{1 \right\}} 0.22078 ^{\left\{2 \right\}} 0.24705 ^{\left\{6 \right\}} 0.23923 ^{\left\{4 \right\}}
    \sum{Ranks} {\textbf{71}} ^{\left\{6.5 \right\}} {\textbf{38}} ^{\left\{2 \right\}} {\textbf{71}} ^{\left\{6.5 \right\}} {\textbf{50}} ^{\left\{3 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{76}} ^{\left\{8 \right\}} {\textbf{55}} ^{\left\{4 \right\}} {\textbf{59}} ^{\left\{5 \right\}}
    500 |BIAS| \hat{\vartheta} 0.93304 ^{\left\{5 \right\}} 0.93263 ^{\left\{4 \right\}} 0.97539 ^{\left\{7 \right\}} 0.92961 ^{\left\{3 \right\}} 0.05348 ^{\left\{1 \right\}} 1.08240 ^{\left\{8 \right\}} 0.95522 ^{\left\{6 \right\}} 0.92527 ^{\left\{2 \right\}}
    \hat{\varphi} 0.27572 ^{\left\{2 \right\}} 0.32936 ^{\left\{5 \right\}} 0.29210 ^{\left\{4 \right\}} 0.33160 ^{\left\{6 \right\}} 0.19113 ^{\left\{1 \right\}} 0.58412 ^{\left\{8 \right\}} 0.28766 ^{\left\{3 \right\}} 0.33820 ^{\left\{7 \right\}}
    \hat{\lambda} 0.34882 ^{\left\{7 \right\}} 0.31976 ^{\left\{2 \right\}} 0.33838 ^{\left\{6 \right\}} 0.33117 ^{\left\{5 \right\}} 0.03908 ^{\left\{1 \right\}} 0.35124 ^{\left\{8 \right\}} 0.32736 ^{\left\{3 \right\}} 0.32969 ^{\left\{4 \right\}}
    \hat{\theta} 0.61892 ^{\left\{8 \right\}} 0.57580 ^{\left\{3 \right\}} 0.60923 ^{\left\{7 \right\}} 0.59341 ^{\left\{6 \right\}} 0.12272 ^{\left\{1 \right\}} 0.51040 ^{\left\{2 \right\}} 0.59246 ^{\left\{5 \right\}} 0.58416 ^{\left\{4 \right\}}
    MSEs \hat{\vartheta} 0.99386 ^{\left\{2 \right\}} 1.04383 ^{\left\{6 \right\}} 1.04849 ^{\left\{7 \right\}} 1.04352 ^{\left\{5 \right\}} 0.00732 ^{\left\{1 \right\}} 1.28318 ^{\left\{8 \right\}} 1.01861 ^{\left\{3 \right\}} 1.03056 ^{\left\{4 \right\}}
    \hat{\varphi} 0.11591 ^{\left\{2 \right\}} 0.16651 ^{\left\{5 \right\}} 0.13079 ^{\left\{4 \right\}} 0.16807 ^{\left\{6 \right\}} 0.06394 ^{\left\{1 \right\}} 0.45248 ^{\left\{8 \right\}} 0.12739 ^{\left\{3 \right\}} 0.17250 ^{\left\{7 \right\}}
    \hat{\lambda} 0.17000 ^{\left\{7 \right\}} 0.15789 ^{\left\{3 \right\}} 0.15993 ^{\left\{4 \right\}} 0.16663 ^{\left\{5 \right\}} 0.00250 ^{\left\{1 \right\}} 0.18698 ^{\left\{8 \right\}} 0.15186 ^{\left\{2 \right\}} 0.16915 ^{\left\{6 \right\}}
    \hat{\theta} 0.48714 ^{\left\{8 \right\}} 0.45146 ^{\left\{4 \right\}} 0.47250 ^{\left\{6 \right\}} 0.47497 ^{\left\{7 \right\}} 0.02504 ^{\left\{1 \right\}} 0.39915 ^{\left\{2 \right\}} 0.45105 ^{\left\{3 \right\}} 0.47078 ^{\left\{5 \right\}}
    MREs \hat{\vartheta} 0.26658 ^{\left\{5 \right\}} 0.26647 ^{\left\{4 \right\}} 0.27868 ^{\left\{7 \right\}} 0.26560 ^{\left\{3 \right\}} 0.01528 ^{\left\{1 \right\}} 0.30926 ^{\left\{8 \right\}} 0.27292 ^{\left\{6 \right\}} 0.26436 ^{\left\{2 \right\}}
    \hat{\varphi} 0.13786 ^{\left\{2 \right\}} 0.16468 ^{\left\{5 \right\}} 0.14605 ^{\left\{4 \right\}} 0.16580 ^{\left\{6 \right\}} 0.09557 ^{\left\{1 \right\}} 0.29206 ^{\left\{8 \right\}} 0.14383 ^{\left\{3 \right\}} 0.16910 ^{\left\{7 \right\}}
    \hat{\lambda} 0.23255 ^{\left\{7 \right\}} 0.21318 ^{\left\{2 \right\}} 0.22559 ^{\left\{6 \right\}} 0.22078 ^{\left\{5 \right\}} 0.02606 ^{\left\{1 \right\}} 0.23416 ^{\left\{8 \right\}} 0.21824 ^{\left\{3 \right\}} 0.21980 ^{\left\{4 \right\}}
    \hat{\theta} 0.24757 ^{\left\{8 \right\}} 0.23032 ^{\left\{3 \right\}} 0.24369 ^{\left\{7 \right\}} 0.23736 ^{\left\{6 \right\}} 0.04909 ^{\left\{1 \right\}} 0.20416 ^{\left\{2 \right\}} 0.23698 ^{\left\{5 \right\}} 0.23367 ^{\left\{4 \right\}}
    \sum{Ranks} {\textbf{63}} ^{\left\{5.5 \right\}} {\textbf{46}} ^{\left\{3 \right\}} {\textbf{69}} ^{\left\{7 \right\}} {\textbf{63}} ^{\left\{5.5 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{78}} ^{\left\{8 \right\}} {\textbf{45}} ^{\left\{2 \right\}} {\textbf{56}} ^{\left\{4 \right\}}

     | Show Table
    DownLoad: CSV
    Table 6.  Simulation results for \boldsymbol{\eta} = (\vartheta = 4.5, \varphi = 0.75 , \lambda = 0.5 , \theta = 1.25 )^{\intercal} .
    n Est. Est. Par. MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    20 |BIAS| \hat{\vartheta} 1.25197 ^{\left\{8 \right\}} 0.45438 ^{\left\{3 \right\}} 1.06521 ^{\left\{7 \right\}} 0.44888 ^{\left\{2 \right\}} 0.20680 ^{\left\{1 \right\}} 0.83805 ^{\left\{5 \right\}} 1.02528 ^{\left\{6 \right\}} 0.62513 ^{\left\{4 \right\}}
    \hat{\varphi} 0.58123 ^{\left\{5 \right\}} 0.60203 ^{\left\{7 \right\}} 0.57995 ^{\left\{4 \right\}} 0.61278 ^{\left\{8 \right\}} 0.16575 ^{\left\{1 \right\}} 0.57749 ^{\left\{3 \right\}} 0.53508 ^{\left\{2 \right\}} 0.58165 ^{\left\{6 \right\}}
    \hat{\lambda} 0.08854 ^{\left\{8 \right\}} 0.07652 ^{\left\{2 \right\}} 0.08227 ^{\left\{7 \right\}} 0.07831 ^{\left\{3 \right\}} 0.06474 ^{\left\{1 \right\}} 0.08065 ^{\left\{6 \right\}} 0.07939 ^{\left\{4 \right\}} 0.07980 ^{\left\{5 \right\}}
    \hat{\theta} 0.66759 ^{\left\{8 \right\}} 0.42262 ^{\left\{2 \right\}} 0.53041 ^{\left\{7 \right\}} 0.44839 ^{\left\{3 \right\}} 0.32466 ^{\left\{1 \right\}} 0.51024 ^{\left\{5 \right\}} 0.52797 ^{\left\{6 \right\}} 0.48959 ^{\left\{4 \right\}}
    MSEs \hat{\vartheta} 2.41625 ^{\left\{8 \right\}} 0.60512 ^{\left\{2 \right\}} 1.67131 ^{\left\{6 \right\}} 0.67908 ^{\left\{3 \right\}} 0.18285 ^{\left\{1 \right\}} 1.58289 ^{\left\{5 \right\}} 1.74298 ^{\left\{7 \right\}} 1.01407 ^{\left\{4 \right\}}
    \hat{\varphi} 0.42148 ^{\left\{3 \right\}} 0.46192 ^{\left\{7 \right\}} 0.43565 ^{\left\{5 \right\}} 0.46874 ^{\left\{8 \right\}} 0.38218 ^{\left\{1 \right\}} 0.43432 ^{\left\{4 \right\}} 0.38271 ^{\left\{2 \right\}} 0.43679 ^{\left\{6 \right\}}
    \hat{\lambda} 0.01072 ^{\left\{8 \right\}} 0.00870 ^{\left\{2 \right\}} 0.00963 ^{\left\{7 \right\}} 0.00906 ^{\left\{3 \right\}} 0.00620 ^{\left\{1 \right\}} 0.00950 ^{\left\{6 \right\}} 0.00923 ^{\left\{5 \right\}} 0.00919 ^{\left\{4 \right\}}
    \hat{\theta} 0.58894 ^{\left\{8 \right\}} 0.28693 ^{\left\{2 \right\}} 0.40885 ^{\left\{6 \right\}} 0.32249 ^{\left\{3 \right\}} 0.16767 ^{\left\{1 \right\}} 0.38646 ^{\left\{5 \right\}} 0.41599 ^{\left\{7 \right\}} 0.36863 ^{\left\{4 \right\}}
    MREs \hat{\vartheta} 0.27821 ^{\left\{8 \right\}} 0.10097 ^{\left\{3 \right\}} 0.23671 ^{\left\{7 \right\}} 0.09975 ^{\left\{2 \right\}} 0.04596 ^{\left\{1 \right\}} 0.18623 ^{\left\{5 \right\}} 0.22784 ^{\left\{6 \right\}} 0.13892 ^{\left\{4 \right\}}
    \hat{\varphi} 0.77497 ^{\left\{5 \right\}} 0.80271 ^{\left\{7 \right\}} 0.77327 ^{\left\{4 \right\}} 0.81704 ^{\left\{8 \right\}} 0.70903 ^{\left\{1 \right\}} 0.76998 ^{\left\{3 \right\}} 0.71344 ^{\left\{2 \right\}} 0.77554 ^{\left\{6 \right\}}
    \hat{\lambda} 0.17707 ^{\left\{8 \right\}} 0.15303 ^{\left\{2 \right\}} 0.16453 ^{\left\{7 \right\}} 0.15662 ^{\left\{3 \right\}} 0.12948 ^{\left\{1 \right\}} 0.16130 ^{\left\{6 \right\}} 0.15879 ^{\left\{4 \right\}} 0.15960 ^{\left\{5 \right\}}
    \hat{\theta} 0.53407 ^{\left\{8 \right\}} 0.33809 ^{\left\{2 \right\}} 0.42432 ^{\left\{7 \right\}} 0.35871 ^{\left\{3 \right\}} 0.25973 ^{\left\{1 \right\}} 0.40819 ^{\left\{5 \right\}} 0.42237 ^{\left\{6 \right\}} 0.39167 ^{\left\{4 \right\}}
    \sum{Ranks} {\textbf{85}} ^{\left\{8 \right\}} {\textbf{41}} ^{\left\{2 \right\}} {\textbf{74}} ^{\left\{7 \right\}} {\textbf{49}} ^{\left\{3 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{58}} ^{\left\{6 \right\}} {\textbf{57}} ^{\left\{5 \right\}} {\textbf{56}} ^{\left\{4 \right\}}
    80 |BIAS| \hat{\vartheta} 1.62748 ^{\left\{8 \right\}} 0.91367 ^{\left\{2 \right\}} 1.37823 ^{\left\{7 \right\}} 0.98139 ^{\left\{3 \right\}} 0.11224 ^{\left\{1 \right\}} 1.13720 ^{\left\{5 \right\}} 1.31803 ^{\left\{6 \right\}} 1.11805 ^{\left\{4 \right\}}
    \hat{\varphi} 0.31837 ^{\left\{3 \right\}} 0.39968 ^{\left\{7 \right\}} 0.34474 ^{\left\{4 \right\}} 0.40380 ^{\left\{8 \right\}} 0.27352 ^{\left\{1 \right\}} 0.37466 ^{\left\{6 \right\}} 0.31821 ^{\left\{2 \right\}} 0.35079 ^{\left\{5 \right\}}
    \hat{\lambda} 0.07169 ^{\left\{8 \right\}} 0.05804 ^{\left\{3 \right\}} 0.06253 ^{\left\{7 \right\}} 0.06113 ^{\left\{6 \right\}} 0.03286 ^{\left\{1 \right\}} 0.05699 ^{\left\{2 \right\}} 0.05980 ^{\left\{5 \right\}} 0.05870 ^{\left\{4 \right\}}
    \hat{\theta} 0.64853 ^{\left\{8 \right\}} 0.39956 ^{\left\{2 \right\}} 0.49396 ^{\left\{7 \right\}} 0.44278 ^{\left\{4 \right\}} 0.16292 ^{\left\{1 \right\}} 0.43570 ^{\left\{3 \right\}} 0.47512 ^{\left\{6 \right\}} 0.45276 ^{\left\{5 \right\}}
    MSEs \hat{\vartheta} 3.14585 ^{\left\{8 \right\}} 1.58782 ^{\left\{2 \right\}} 2.33956 ^{\left\{7 \right\}} 1.79431 ^{\left\{3 \right\}} 0.08679 ^{\left\{1 \right\}} 1.96177 ^{\left\{4 \right\}} 2.22845 ^{\left\{6 \right\}} 2.05141 ^{\left\{5 \right\}}
    \hat{\varphi} 0.15254 ^{\left\{2 \right\}} 0.23761 ^{\left\{7 \right\}} 0.18156 ^{\left\{4 \right\}} 0.24031 ^{\left\{8 \right\}} 0.12335 ^{\left\{1 \right\}} 0.22013 ^{\left\{6 \right\}} 0.15798 ^{\left\{3 \right\}} 0.19064 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00707 ^{\left\{8 \right\}} 0.00520 ^{\left\{4 \right\}} 0.00579 ^{\left\{7 \right\}} 0.00566 ^{\left\{6 \right\}} 0.00171 ^{\left\{1 \right\}} 0.00514 ^{\left\{2 \right\}} 0.00541 ^{\left\{5 \right\}} 0.00519 ^{\left\{3 \right\}}
    \hat{\theta} 0.56658 ^{\left\{8 \right\}} 0.28713 ^{\left\{2 \right\}} 0.38674 ^{\left\{7 \right\}} 0.34041 ^{\left\{4 \right\}} 0.04197 ^{\left\{1 \right\}} 0.32550 ^{\left\{3 \right\}} 0.36722 ^{\left\{6 \right\}} 0.35156 ^{\left\{5 \right\}}
    MREs \hat{\vartheta} 0.36166 ^{\left\{8 \right\}} 0.20304 ^{\left\{2 \right\}} 0.30627 ^{\left\{7 \right\}} 0.21809 ^{\left\{3 \right\}} 0.02494 ^{\left\{1 \right\}} 0.25271 ^{\left\{5 \right\}} 0.29289 ^{\left\{6 \right\}} 0.24846 ^{\left\{4 \right\}}
    \hat{\varphi} 0.42449 ^{\left\{3 \right\}} 0.53291 ^{\left\{7 \right\}} 0.45966 ^{\left\{4 \right\}} 0.53840 ^{\left\{8 \right\}} 0.36469 ^{\left\{1 \right\}} 0.49955 ^{\left\{6 \right\}} 0.42429 ^{\left\{2 \right\}} 0.46771 ^{\left\{5 \right\}}
    \hat{\lambda} 0.14337 ^{\left\{8 \right\}} 0.11609 ^{\left\{3 \right\}} 0.12506 ^{\left\{7 \right\}} 0.12226 ^{\left\{6 \right\}} 0.06572 ^{\left\{1 \right\}} 0.11399 ^{\left\{2 \right\}} 0.11961 ^{\left\{5 \right\}} 0.11740 ^{\left\{4 \right\}}
    \hat{\theta} 0.51882 ^{\left\{8 \right\}} 0.31965 ^{\left\{2 \right\}} 0.39517 ^{\left\{7 \right\}} 0.35422 ^{\left\{4 \right\}} 0.13034 ^{\left\{1 \right\}} 0.34856 ^{\left\{3 \right\}} 0.38010 ^{\left\{6 \right\}} 0.36221 ^{\left\{5 \right\}}
    \sum{Ranks} {\textbf{80}} ^{\left\{8 \right\}} {\textbf{43}} ^{\left\{2 \right\}} {\textbf{75}} ^{\left\{7 \right\}} {\textbf{63}} ^{\left\{6 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{47}} ^{\left\{3 \right\}} {\textbf{58}} ^{\left\{5 \right\}} {\textbf{54}} ^{\left\{4 \right\}}
    200 |BIAS| \hat{\vartheta} 1.48139 ^{\left\{8 \right\}} 1.17284 ^{\left\{2 \right\}} 1.40391 ^{\left\{7 \right\}} 1.21294 ^{\left\{4 \right\}} 0.04307 ^{\left\{1 \right\}} 1.17950 ^{\left\{3 \right\}} 1.33404 ^{\left\{6 \right\}} 1.29174 ^{\left\{5 \right\}}
    \hat{\varphi} 0.20186 ^{\left\{2 \right\}} 0.26830 ^{\left\{7 \right\}} 0.21385 ^{\left\{4 \right\}} 0.26575 ^{\left\{6 \right\}} 0.16575 ^{\left\{1 \right\}} 0.27408 ^{\left\{8 \right\}} 0.20558 ^{\left\{3 \right\}} 0.23166 ^{\left\{5 \right\}}
    \hat{\lambda} 0.06056 ^{\left\{8 \right\}} 0.05260 ^{\left\{3 \right\}} 0.05573 ^{\left\{7 \right\}} 0.05571 ^{\left\{6 \right\}} 0.02038 ^{\left\{1 \right\}} 0.04542 ^{\left\{2 \right\}} 0.05309 ^{\left\{4 \right\}} 0.05470 ^{\left\{5 \right\}}
    \hat{\theta} 0.54563 ^{\left\{8 \right\}} 0.42847 ^{\left\{3 \right\}} 0.47838 ^{\left\{7 \right\}} 0.45810 ^{\left\{5 \right\}} 0.09746 ^{\left\{1 \right\}} 0.36816 ^{\left\{2 \right\}} 0.44966 ^{\left\{4 \right\}} 0.46232 ^{\left\{6 \right\}}
    MSEs \hat{\vartheta} 2.63270 ^{\left\{8 \right\}} 2.08923 ^{\left\{3 \right\}} 2.37558 ^{\left\{7 \right\}} 2.20468 ^{\left\{5 \right\}} 0.02535 ^{\left\{1 \right\}} 1.86391 ^{\left\{2 \right\}} 2.18628 ^{\left\{4 \right\}} 2.32684 ^{\left\{6 \right\}}
    \hat{\varphi} 0.06343 ^{\left\{2 \right\}} 0.11259 ^{\left\{7 \right\}} 0.07126 ^{\left\{4 \right\}} 0.11064 ^{\left\{6 \right\}} 0.04499 ^{\left\{1 \right\}} 0.12626 ^{\left\{8 \right\}} 0.06649 ^{\left\{3 \right\}} 0.08397 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00531 ^{\left\{8 \right\}} 0.00437 ^{\left\{3 \right\}} 0.00472 ^{\left\{6 \right\}} 0.00486 ^{\left\{7 \right\}} 0.00066 ^{\left\{1 \right\}} 0.00347 ^{\left\{2 \right\}} 0.00441 ^{\left\{4 \right\}} 0.00470 ^{\left\{5 \right\}}
    \hat{\theta} 0.44122 ^{\left\{8 \right\}} 0.33416 ^{\left\{3 \right\}} 0.37078 ^{\left\{5 \right\}} 0.37139 ^{\left\{6 \right\}} 0.01519 ^{\left\{1 \right\}} 0.25838 ^{\left\{2 \right\}} 0.33754 ^{\left\{4 \right\}} 0.37704 ^{\left\{7 \right\}}
    MREs \hat{\vartheta} 0.32920 ^{\left\{8 \right\}} 0.26063 ^{\left\{2 \right\}} 0.31198 ^{\left\{7 \right\}} 0.26954 ^{\left\{4 \right\}} 0.00957 ^{\left\{1 \right\}} 0.26211 ^{\left\{3 \right\}} 0.29645 ^{\left\{6 \right\}} 0.28705 ^{\left\{5 \right\}}
    \hat{\varphi} 0.26915 ^{\left\{2 \right\}} 0.35774 ^{\left\{7 \right\}} 0.28513 ^{\left\{4 \right\}} 0.35434 ^{\left\{6 \right\}} 0.22100 ^{\left\{1 \right\}} 0.36544 ^{\left\{8 \right\}} 0.27411 ^{\left\{3 \right\}} 0.30888 ^{\left\{5 \right\}}
    \hat{\lambda} 0.12113 ^{\left\{8 \right\}} 0.10520 ^{\left\{3 \right\}} 0.11146 ^{\left\{7 \right\}} 0.11142 ^{\left\{6 \right\}} 0.04075 ^{\left\{1 \right\}} 0.09084 ^{\left\{2 \right\}} 0.10618 ^{\left\{4 \right\}} 0.10941 ^{\left\{5 \right\}}
    \hat{\theta} 0.43650 ^{\left\{8 \right\}} 0.34278 ^{\left\{3 \right\}} 0.38270 ^{\left\{7 \right\}} 0.36648 ^{\left\{5 \right\}} 0.07797 ^{\left\{1 \right\}} 0.29453 ^{\left\{2 \right\}} 0.35973 ^{\left\{4 \right\}} 0.36986 ^{\left\{6 \right\}}
    \sum{Ranks} {\textbf{78}} ^{\left\{8 \right\}} {\textbf{46}} ^{\left\{3 \right\}} {\textbf{72}} ^{\left\{7 \right\}} {\textbf{66}} ^{\left\{6 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{44}} ^{\left\{2 \right\}} {\textbf{49}} ^{\left\{4 \right\}} {\textbf{65}} ^{\left\{5 \right\}}
    500 |BIAS| \hat{\vartheta} 1.29672 ^{\left\{5 \right\}} 1.27235 ^{\left\{3 \right\}} 1.31237 ^{\left\{6 \right\}} 1.32513 ^{\left\{7 \right\}} 0.01519 ^{\left\{1 \right\}} 1.15120 ^{\left\{2 \right\}} 1.28994 ^{\left\{4 \right\}} 1.34189 ^{\left\{8 \right\}}
    \hat{\varphi} 0.13744 ^{\left\{2 \right\}} 0.17802 ^{\left\{6 \right\}} 0.14815 ^{\left\{4 \right\}} 0.18664 ^{\left\{7 \right\}} 0.10227 ^{\left\{1 \right\}} 0.19392 ^{\left\{8 \right\}} 0.14640 ^{\left\{3 \right\}} 0.15865 ^{\left\{5 \right\}}
    \hat{\lambda} 0.04970 ^{\left\{5 \right\}} 0.05107 ^{\left\{6 \right\}} 0.04913 ^{\left\{4 \right\}} 0.05400 ^{\left\{8 \right\}} 0.01264 ^{\left\{1 \right\}} 0.03665 ^{\left\{2 \right\}} 0.04825 ^{\left\{3 \right\}} 0.05335 ^{\left\{7 \right\}}
    \hat{\theta} 0.44102 ^{\left\{5 \right\}} 0.44509 ^{\left\{6 \right\}} 0.43050 ^{\left\{4 \right\}} 0.47518 ^{\left\{8 \right\}} 0.05962 ^{\left\{1 \right\}} 0.31796 ^{\left\{2 \right\}} 0.42160 ^{\left\{3 \right\}} 0.46945 ^{\left\{7 \right\}}
    MSEs \hat{\vartheta} 2.07266 ^{\left\{4 \right\}} 2.19148 ^{\left\{6 \right\}} 2.07839 ^{\left\{5 \right\}} 2.34226 ^{\left\{8 \right\}} 0.00344 ^{\left\{1 \right\}} 1.67247 ^{\left\{2 \right\}} 2.02330 ^{\left\{3 \right\}} 2.31957 ^{\left\{7 \right\}}
    \hat{\varphi} 0.02955 ^{\left\{2 \right\}} 0.05030 ^{\left\{6 \right\}} 0.03417 ^{\left\{4 \right\}} 0.05288 ^{\left\{7 \right\}} 0.01679 ^{\left\{1 \right\}} 0.06276 ^{\left\{8 \right\}} 0.03295 ^{\left\{3 \right\}} 0.03874 ^{\left\{5 \right\}}
    \hat{\lambda} 0.00377 ^{\left\{4 \right\}} 0.00418 ^{\left\{6 \right\}} 0.00378 ^{\left\{5 \right\}} 0.00452 ^{\left\{7 \right\}} 0.00025 ^{\left\{1 \right\}} 0.00242 ^{\left\{2 \right\}} 0.00363 ^{\left\{3 \right\}} 0.00454 ^{\left\{8 \right\}}
    \hat{\theta} 0.30987 ^{\left\{5 \right\}} 0.34423 ^{\left\{6 \right\}} 0.30505 ^{\left\{4 \right\}} 0.37795 ^{\left\{8 \right\}} 0.00564 ^{\left\{1 \right\}} 0.19875 ^{\left\{2 \right\}} 0.29242 ^{\left\{3 \right\}} 0.37470 ^{\left\{7 \right\}}
    MREs \hat{\vartheta} 0.28816 ^{\left\{5 \right\}} 0.28275 ^{\left\{3 \right\}} 0.29164 ^{\left\{6 \right\}} 0.29447 ^{\left\{7 \right\}} 0.00337 ^{\left\{1 \right\}} 0.25582 ^{\left\{2 \right\}} 0.28665 ^{\left\{4 \right\}} 0.29820 ^{\left\{8 \right\}}
    \hat{\varphi} 0.18326 ^{\left\{2 \right\}} 0.23736 ^{\left\{6 \right\}} 0.19754 ^{\left\{4 \right\}} 0.24885 ^{\left\{7 \right\}} 0.13636 ^{\left\{1 \right\}} 0.25856 ^{\left\{8 \right\}} 0.19520 ^{\left\{3 \right\}} 0.21153 ^{\left\{5 \right\}}
    \hat{\lambda} 0.09940 ^{\left\{5 \right\}} 0.10214 ^{\left\{6 \right\}} 0.09825 ^{\left\{4 \right\}} 0.10801 ^{\left\{8 \right\}} 0.02528 ^{\left\{1 \right\}} 0.07330 ^{\left\{2 \right\}} 0.09651 ^{\left\{3 \right\}} 0.10671 ^{\left\{7 \right\}}
    \hat{\theta} 0.35281 ^{\left\{5 \right\}} 0.35607 ^{\left\{6 \right\}} 0.34440 ^{\left\{4 \right\}} 0.38014 ^{\left\{8 \right\}} 0.04770 ^{\left\{1 \right\}} 0.25437 ^{\left\{2 \right\}} 0.33728 ^{\left\{3 \right\}} 0.37556 ^{\left\{7 \right\}}
    \sum{Ranks} {\textbf{49}} ^{\left\{4 \right\}} {\textbf{66}} ^{\left\{6 \right\}} {\textbf{54}} ^{\left\{5 \right\}} {\textbf{90}} ^{\left\{8 \right\}} {\textbf{12}} ^{\left\{1 \right\}} {\textbf{42}} ^{\left\{3 \right\}} {\textbf{38}} ^{\left\{2 \right\}} {\textbf{81}} ^{\left\{7 \right\}}

     | Show Table
    DownLoad: CSV

    All computations are obtained using R software (version 4.0.2) [22].

    For each sample and each parametric combination, the EWFr parameters \vartheta , \varphi , \lambda and \theta are estimated using the eight estimators called MLEs, LSEs, WLSEs, MPSEs, CRVMEs, ADEs, PCEs, and RADEs. Simulated results are listed in Tables 26 which also indicate the ranks of each of the proposed estimators in each row, where the superscripts show the indicators, and the \sum Ranks illustrates the partial sum of ranks in each column for a particular sample size.

    Table 7 lists the partial and overall ranks for all parametric combinations. From Tables 26, one can conclude that all methods of estimation illustrate the consistency property, that is, the MREs and MSEs decrease as the sample size increases, for all parametric combinations. Table 7 shows that the MPS approach has an overall score of 54, hence it outperforms other estimation methods. Therefore, we conclude and confirm the superiority of MPSEs for estimating the EWFr parameters. However, the ADEs and MLEs are approximately have a similar performance, where their overall scores are, respectively, 130.5 and 133.5.

    Table 7.  Partial and overall ranks of the classical estimation methods for several parametric values.
    \mathit{\boldsymbol{\eta}}^{\intercal} n MLEs LSEs WLSEs CRVMEs MPSEs PCEs ADEs RADEs
    (\hat{\vartheta}=1.75, \hat{\varphi}=0.5, \hat{\lambda}=0.25, \hat{\theta}=1.25) 20 2 7 1 5 4 8 3 6
    80 3 7 2 6 1 5 4 8
    200 1.5 7 4 5 1.5 6 3 8
    500 2 5.5 4 5.5 1 7 3 8
    (\hat{\vartheta}=1.75, \hat{\varphi}=2, \hat{\lambda}=1.5, \hat{\theta}=2.5) 20 1 3 2 7 4 8 5.5 5.5
    80 1 3 4 6 2 8 5 7
    200 2 3 4.5 6.5 1 8 4.5 6.5
    500 3 4 5 6 1 8 2 7
    (\hat{\vartheta}=3.5, \hat{\varphi}=0.75, \hat{\lambda}=0.5, \hat{\theta}=1.25) 20 7 4 3 6 1 8 2 5
    80 8 3 4 7 1 5 2 6
    200 6 5 4 8 1 3 2 7
    500 2 6 5 7 1 4 3 8
    (\hat{\vartheta}=3.5, \hat{\varphi}=2, \hat{\lambda}=1.5, \hat{\theta}=2.5) 20 8 2 6 3 1 7 5 4
    80 8 2 7 3 1 6 4 5
    200 6.5 2 6.5 3 1 8 4 5
    500 5.5 3 7 5.5 1 8 2 4
    (\hat{\vartheta}=4.5, \hat{\varphi}=0.75, \hat{\lambda}=0.5, \hat{\theta}=1.25) 20 8 2 7 3 1 6 5 4
    80 8 2 7 6 1 3 5 4
    200 8 3 7 6 1 2 4 5
    500 4 6 5 8 1 3 2 7
    (\hat{\vartheta}=4.5, \hat{\varphi}=0.75, \hat{\lambda}=0.5, \hat{\theta}=1.25) 20 8 2 5 3 1 7 6 4
    80 6 2 4 3 1 8 7 5
    200 6 2 4 3 1 7 8 5
    500 6 2 5 3 1 8 7 4
    (\hat{\vartheta}=0.25, \hat{\varphi}=3.5, \hat{\lambda}=3, \hat{\theta}=0.25) 20 1 6 8 2 7 5 4 3
    80 1.5 5 8 1.5 6 4 3 7
    200 1 7 4 6 2 3 5 8
    500 2 8 6 7 1 3 4.5 4.5
    (\hat{\vartheta}=0.75, \hat{\varphi}=2.5, \hat{\lambda}=4.25, \hat{\theta}=0.25) 20 2 8 6 5 3 1 4 7
    80 1.5 7 5 6 1.5 3 4 8
    200 2 7 5 6 1 3 4 8
    500 2 8 5 6 1 3 4 7
    \sum Ranks \textbf{133.5} \textbf{143.5}\textbf{160}\textbf{164}\textbf{54}\textbf{176}\textbf{130.5}\textbf{190.5}
    {\textbf{Overall Rank}}\textbf{3}\textbf{4}\textbf{5}\textbf{6}\textbf{1}\textbf{7}\textbf{2}\textbf{8}

     | Show Table
    DownLoad: CSV

    In this section, the flexibility and importance of the EWFr distribution in modeling real-life data are illustrated using two datasets from the medicine and engineering fields. The first dataset contains 128 observations and it refers to remission times (in months) for bladder cancer patients [23]. The second dataset contains 63 observations and it represents strengths for single carbon fibers of 10 mm of gauge lengths [24]. The fits of the EWFr distribution is checked and compared with some important extensions of the Fr distribution called the exponentiated-Fr (EFr) [6], beta-Fr (BFr) [7], odd Lomax-Fr (OLxFr) [25], Kumaraswamy Marshall–Olkin Fr (KMOFr) [26], gamma extended-Fr (GExFr) [27] and transmuted exponentiated-Fr (TEFr) [28] and Fr distributions.

    We checked the competing distributions using some goodness-of-fit analytical measures such as AIC (Akaike information criterion), CAIC (consistent Akaike information criterion), HQIC (Hannan–Quinn information criterion), BIC (Bayesian information criterion), W^{\ast} (Cramér–Von Mises), A^{\ast} (Anderson–Darling), and KS (Kolmogorov–Smirnov) statistics with its PV (p-value).

    The maximum likelihood (ML) estimates of the parameters of the fitted distributions, their standard errors (SEs), and the analytical measures are reported in Tables 8 and 9 for the cancer and gauge lengths data, respectively. The numbers in Tables 8 and 9 indicate that the EWFr distribution gives a superior fit over other competing models, since it has the lowest values for all measures and the largest PV.

    Table 8.  The parameters estimates of the competing distributions and goodness-of-fit measures for cancer data.
    Model Par.. Estimates (SEs) AIC CAIC BIC HQIC W^{*} A^{*} KS (PV)
    EWFr \hat{\vartheta} 56.93662 (38.42845) 827.52150 827.84670 838.92960 832.15660 0.01991 0.13402 0.03757 0.99713
    \hat{\varphi} 0.46697 (0.22382)
    \hat{\lambda} 0.71825 (0.01713)
    \hat{\theta} 0.01794 (0.01207)
    OLxFr \hat{\vartheta} 2.18260 (1.04763) 827.70270 828.02790 839.11080 832.33780 0.02380 0.16520 0.04060 0.98433
    \hat{\varphi} 625.38000 (622.71234)
    \hat{a} 0.12210 (0.08023)
    \hat{b} 1.38560 (0.17273)
    KMOFr \hat{\vartheta} 43.87750 (128.52731) 831.05330 831.54510 845.31340 836.84730 0.26278 0.34950 0.04457 0.96120
    \hat{\varphi} 0.52028 (0.41388)
    \hat{\delta} 0.01314 (0.00808)
    \hat{a} 3.27359 (2.90929)
    \hat{b} 19.93782 (47.58906)
    EFr \hat{a} 1426.40000 (1440.19245) 830.85880 831.05240 839.41490 834.33520 0.06720 0.46640 0.04910 0.91754
    \hat{b} 0.26240 (0.02850)
    \hat{\theta} 46.24800 (22.87321)
    BFr \hat{\vartheta} 0.60970 (0.32261) 833.09830 833.42350 844.50640 837.73350 0.06900 0.47650 0.05540 0.82683
    \hat{\varphi} 36.60200 (19.48341)
    \hat{a} 739.38700 (629.24021)
    \hat{b} 0.32240 (0.06044)
    GExFr \hat{\vartheta} 226.67000 (267.96324) 840.21630 840.54150 851.62450 844.85150 0.14320 0.95970 0.06640 0.62593
    \hat{\varphi} 91.93900 (133.94324)
    \hat{a} 22.27100 (119.19139)
    \hat{b} 0.07090 (0.04132)
    TEFr \hat{\vartheta} 3.25820 (0.40714) 892.00150 892.09750 897.70560 894.31910 0.74430 4.54640 0.14080 0.01254
    \hat{\varphi} 0.75210 (0.04224)
    \hat{a} 39.38721 (40.24321)
    \hat{b} 0.25243 (0.76041)
    Fr \hat{\theta} 0.75208 (0.04242) 892.00150 892.09750 897.70560 894.31910 0.74432 4.54642 0.14079 0.01250
    \hat{\lambda} 2.43109 (0.21928)

     | Show Table
    DownLoad: CSV
    Table 9.  The parameters estimates of the competing distributions and goodness-of-fit measures for gauge lengths data.
    Model Par.. Estimates (SEs) AIC CAIC BIC HQIC W^{*} A^{*} KS (PV)
    EWFr \hat{\vartheta} 0.76563 (0.3765631) 119.68850 120.37820 128.26110 123.06020 0.04181 0.23988 0.06847 0.92920
    \hat{\varphi} 0.04349 (0.3074545)
    \hat{\lambda} 145.67068 (208.851634)
    \hat{\theta} 4.60846 (1.2033681)
    OLxFr \hat{\vartheta} 5.14301 (9.9790719) 119.94170 120.63140 128.51430 123.31340 0.04741 0.26530 0.07631 0.85664
    \hat{\varphi} 5.82568 (7.6204045)
    \hat{a} 4.17374 (2.671917)
    \hat{b} 2.82338 (0.9308868)
    KMOFr \hat{\vartheta} 31946.70000 (837.7074) 121.90480 122.95750 132.62050 126.11940 0.04616 0.26108 0.07450 0.87551
    \hat{\varphi} 3.40405 (1.493079)
    \hat{\delta} 3.35291 (0.9682264)
    \hat{a} 0.85381 (0.1934628)
    \hat{b} 13724.50000 (32837.29)
    EFr \hat{a} 2.58672 (2.2847576) 122.19730 122.88700 130.76990 125.56900 0.07082 0.40707 0.08894 0.70136
    \hat{b} 0.50304 (0.4780356)
    \hat{\theta} 6.25000 (10.0300775)
    BFr \hat{\vartheta} 2.38748 (5.65075) 120.58420 121.27380 129.15670 123.95580 0.06008 0.32203 0.07953 0.82045
    \hat{\varphi} 1.00168 (5.322252)
    \hat{a} 22.38231 (162.860747)
    \hat{b} 27.37096 (295.790324)
    GExFr \hat{\vartheta} 2.41716 (8.509608) 120.57980 121.26950 129.15240 123.95150 0.06064 0.32329 0.07962 0.81934
    \hat{\varphi} 1.20859 (2.106142)
    \hat{a} 24.77784 (82.649275)
    \hat{b} 15.60163 (85.339807)
    TEFr \hat{\vartheta} 4.04638 (1.0119058) 121.04420 121.73390 129.61670 124.41580 0.06547 0.34378 0.07500 0.87047
    \hat{\varphi} 2.50000 (0.5973595)
    \hat{a} 5.25000 (2.6300897)
    \hat{b} 0.09255 (1.2750272)
    Fr \hat{\theta} 5.43392 (0.50788) 121.80430 122.00430 126.09060 123.49010 0.11497 0.64202 0.10013 0.55274
    \hat{\lambda} 230.48644 (110.91778)

     | Show Table
    DownLoad: CSV

    Some plots including the PDF, CDF, and SF along with the PP plots of the EWFr model are displayed in Figure 3 for both datasets. The PP plots of all studied distributions are displayed in Figure 4 for the two datasets, respectively.

    Figure 3.  The fitted EWFr PDF, CDF, SF, and P-P plots of the EWFr distribution.
    Figure 4.  The PP plots of the EWFr distribution and other distributions.

    The estimates of the EWFr parameters under several estimation approaches and the goodness-of-fit measures for both datasets are listed in Tables 10 and 11, respectively. Based on the values of PV in Tables 10 and 11, the Anderson-Darling approach is recommended to estimate the EWFr parameters for cancer data, while the least-squares approach is recommended for gauge lengths data.

    Table 10.  The estimates of the EWFr parameters under several methods of estimation and analytical measures for cancer data.
    Methods \hat{\vartheta} \hat{\varphi} \hat{\lambda} \hat{\theta} W^{*} A^{*} KS PV
    MLEs 56.93661 0.46697 0.71825 0.01794 0.01991 0.13402 0.03757 0.99713
    LSEs 56.93660 0.55502 0.71932 0.01871 0.01850 0.12986 0.03334 0.99918
    MPSEs 56.93660 0.46698 0.71750 0.01717 0.01916 0.13069 0.03617 0.99708
    WLSEs 56.94615 0.51962 0.71884 0.01825 0.01815 0.12600 0.03251 0.99947
    CRVMEs 56.93659 0.55064 0.71962 0.01891 0.01795 0.12584 0.03352 0.99910
    ADEs 56.93668 0.47772 0.71887 0.01815 0.01763 0.12016 0.03167 0.99968
    PCEs 57.47389 0.81500 0.72219 0.02155 0.03320 0.23254 0.03830 0.99367
    RADEs 56.93805 0.56319 0.71967 0.01899 0.01830 0.12878 0.03385 0.99895

     | Show Table
    DownLoad: CSV
    Table 11.  The estimates of the EWFr parameters under several methods of estimation and analytical measures for gauge lengths data.
    \textbf{Methods} \hat{\vartheta} \hat{\varphi} \hat{\lambda} \hat{\theta} W^{*} A^{*} \textbf{KS} \textbf{PV}
    \textbf{MLEs} 0.76563 0.04349 145.67068 4.60846 0.04181 0.23988 0.06847 0.92920
    \textbf{LSEs} 0.69421 0.08110 145.67010 4.56661 0.04850 0.26973 0.06486 0.94154
    \textbf{MPSEs} 0.75534 0.13947 145.66920 4.65631 0.05531 0.29551 0.07780 0.81897
    \textbf{WLSEs} 0.71596 0.01530 145.66740 4.57637 0.04747 0.26675 0.06895 0.90999
    \textbf{CRVMEs} 0.71398 0.00100 145.67030 4.57259 0.04761 0.26713 0.06733 0.92336
    \textbf{ADEs} 0.72963 0.00010 145.67980 4.57988 0.04696 0.26562 0.07047 0.89642
    \textbf{PCEs} 0.75075 0.02596 145.67020 4.59649 0.04775 0.26737 0.07311 0.87060
    \textbf{RADEs} 0.74062 0.00010 145.66970 4.57722 0.04668 0.26516 0.07058 0.89538

     | Show Table
    DownLoad: CSV

    In this paper, we introduced a more flexible four-parameter model called the extended Weibull–Fréchet (EWFr) distribution. Its basic mathematical properties are explored. The EWFr parameters are estimated using eight classical estimation methods. The simulation results showed that the maximum product of spacings approach outperforms other considered methods based on overall ranks. The importance and flexibility of the EWFr distribution over some competing extensions of the Fréchet distribution are addressed by analyzing two real-life datasets from the medicine and engineering fields. The analytical measures showed that our EWFr model returned an adequate fit in comparison with other distributions.

    This study was funded by Taif University Researchers Supporting Project number (TURSP-2020/279), Taif University, Taif, Saudi Arabia. The authors would like to thank the editorial board and the three referees for their constructive comments that improved the final version of the paper.

    The authors declare no conflict of interest.



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