Many particle approximation of the Aw-Rascle-Zhang second order model for vehicular traffic

  • We consider the follow-the-leader approximation of the Aw-Rascle-Zhang (ARZ) model for traffic flow in a multi population formulation. We prove rigorous convergence to weak solutions of the ARZ system in the many particle limit in presence of vacuum. The result is based on uniform BV estimates on the discrete particle velocity. We complement our result with numerical simulations of the particle method compared with some exact solutions to the Riemann problem of the ARZ system.

    Citation: Marco Di Francesco, Simone Fagioli, Massimiliano D. Rosini. Many particle approximation of the Aw-Rascle-Zhang second order model for vehicular traffic[J]. Mathematical Biosciences and Engineering, 2017, 14(1): 127-141. doi: 10.3934/mbe.2017009

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  • We consider the follow-the-leader approximation of the Aw-Rascle-Zhang (ARZ) model for traffic flow in a multi population formulation. We prove rigorous convergence to weak solutions of the ARZ system in the many particle limit in presence of vacuum. The result is based on uniform BV estimates on the discrete particle velocity. We complement our result with numerical simulations of the particle method compared with some exact solutions to the Riemann problem of the ARZ system.


    1. Introduction

    Along with the financial crisis in 2008 and gold prices surging to all time high in 2011, academic research into gold has also surged. There are three main qualities about the use of gold as an investment security: to diversify, to hedge and to be a safe haven. Baur (2010) define a diversification instrument "as an asset that is positively (but not perfectly correlated) with another asset or portfolio on average; " a hedge instrument "as an asset that is uncorrelated or negatively correlated with another asset or portfolio on average; " and a safe haven instrument "as an asset that is uncorrelated or negatively correlated with another asset or portfolio in times of market stress or turmoil."

    The earlier literature seems to be indiscriminate about these three completely different uses of gold within investment portfolios. Therefore the earlier focus is more about the diversification value of gold within investment portfolios and lack thereof Mcdonald (1977); Sherman (1982); Jaffe (1989); Chua (1990); Hillier (2006). However, after the 2008 crisis, the need to find a safe haven investment as well as to hedge market risk defined the boundaries of gold's use for particular investment purposes.

    The recent financial literature has focused on testing the hedging and safe-haven functions of gold Baur(2010a, 2010b); Joy (2011); Coudert (2011); Anand (2012); Ghazali (2013); Dee (2013); Ciner (2013); Reboredo(2013a, 2013b); Hood (2013); Gurgun (2014); Bredin (2015); Beckmann (2015). This thorough analysis of gold combines two sources of volatility resulting in biased results.

    Almost all of the studies cited above use the value of gold as denominated in US dollars. Therefore, as the US dollar value increases gold prices (denominated in US dollars) would naturally decrease. This change in the gold price is not necessarily because of the actual value of gold. Any negative or positive correlations with dollar-denominated gold can be the result of changes in the US dollar's value as much as from changes in gold's value. In other words, if gold value is kept constant, the changes in the US dollar value would change the gold's value in US dollar. Results that are based on this simultaneous price variation in gold would purely be based on the US dollar. Thus, using gold's US dollar value in a study that evaluate gold for its hedging and safe haven qualities is akin to using gold value along with the value of the US dollar. International studies of gold denominated in other currencies such as the euro or British pound would be biased for the same reasons. This argument is similar to the arguments made by Scott (2002).

    In this study, we suggest a simple method to purge US dollar value and report results based on gold's own value only. Gold is traditionally traded on the gold bullion floor in London. The gold bullion exchange provides daily gold fixings in US dollars, euros and British pounds. We calculate the return in gold in each of the three currencies and average these returns for each trading day. Using daily gold price averages in three currencies* purges any specific currency value effect on gold's actual value. By purging US dollar value, we believe that this study provides the first true evidence of gold's value as a hedging, diversifying and/or safe haven security.

    *Since the actual gold fixing in London is based on three currencies only, we do not extend the analysis to other currencies.

    The second deficiency in the gold study literature as we see it is the method by which the safe haven quality of gold is evaluated. Baur (2010a) conclude that "investors buy gold on days of extreme negative returns and sell it when market participants regain confidence and volatility is lower" (p. 228). Baur (2010a) define safe haven assets for "times of market stress or turmoil" (p. 219). In a similar study, Baur (2010b) define a safe haven asset as one: "that holds its value in 'stormy weather' or adverse market conditions" (p. 1886). Even though Baur (2010a) definition for safe haven asset refers to higher volatility, their conclusion is based on the "days of extreme negative returns" (p. 228). Similarly, although Baur and McDermott's definition of a safe haven asset refers to "adverse market conditions" they conclude "gold can be seen as a panic buy in the immediate aftermath of an extreme negative market shock" (p. 1897). We argue that this asymmetric view of negative returns for market stress is overly restrictive. Based on the Baur (2010a) definition of safe haven assets, market stress and turmoil would be defined as market volatility and not only times of extreme negative returns. We are not suggesting that investors need a safe haven from positive returns. We are suggesting that investors need a safe haven from high volatility (with the possibility of extreme negative returns) and not just realized extreme negative return days. We extend the previous literature to evaluate gold as a safe haven asset from volatility and not just from realized extreme negative returns.

    US financial markets have experienced significant volatility in the past. The implied volatility index (VIX) has reached to 59.89 on October 1st, 2008 which is down to 10.59 on August 1st, 2017. Volatility, especially high levels of volatility, has many repercussions. Investors require higher returns for higher volatility (Lundblad, 2007). Thus, return is a function of volatility. Also, high volatility may deter investors from financial securities that have traditionally higher volatility. Investors may prefer bonds to stocks, value stocks to growth stocks and larger companies to smaller companies. Finally, volatility may lead to financial crisis or collapse. It is primarily why most equity markets have implemented volatility based circuit breakers. Unfortunately, these circuit breakers, however, do not usually extend more than a trading day. It is these reasons, volatility needs to be addressed. It is these reasons that researchers need to evaluate alternative investment choices for investors to seek shelter from extreme volatility. Our study evaluates gold as one of such securities.

    The study proceeds as follows. In the next section we briefly discuss the literature on gold in terms of the macroeconomy, exchange rates, and equities. The data section includes the variable definitions, notations and data sources. Econometric models are defined in the following section along with the empirical results. Concluding remarks summarize the conclusions and implications of the study. Tables to provide empirical results are included at the end of the study.


    2. Literature Review

    Gold is widely regarded as a safety asset, offering safe haven from instability in the real macroeconomy, foreign exchange markets, or the equity markets.


    2.1. Macroeconomy

    A long stream of research has investigated the relationship between gold prices and macroeconomic/geopolitical news. Research indicates a strong tendency for the market to realize higher returns on gold in light of negative macroeconomic and/or geopolitical news releases Koutsoyiannis (1983); Baker (1985); Christie (2000); Cai (2001); Roache (2010). Mccown (2006) finds that gold prices are highly correlated with expected levels of inflation. Evaluating US and Japan, Wang (2011) report that ability of gold to hedge inflation is dependent on the time horizon. While gold performance as an inflation hedge is poor in the short-run, it's performance is much stronger in the long-run. Beckmann (2013), for instance find that gold can be used to hedge expected inflation for US, UK, Japan and for the EU. They show, similar to Wang (2011), that hedging inflation with gold is stronger for US and the UK especially in the long-run. Having established that the gold is a potential hedging instrument against inflation, especially in the long-run, Batten (2014) evaluate this potential across multiple time periods. They report that the gold and inflation has a dynamic relationship that is stronger during certain time periods, especially during the past decade. Furthermore and more importantly, the gold and inflation relationship is reported to depend on changes in interest rates.


    2.2. Exchange rates

    Gold's relationship to currency exchange rates has been repeatedly identified by researchers. For example, Baker (1985); Sjaastad (1996) and Ghosh (2004) conclude that fluctuations in the price of gold are often influenced by changes in the value of the dollar. Sherman (1983) finds a negative correlation between gold prices and the US exchange rate. Ciner (2013) suggests that gold acts as a safe haven specifically against currency depreciations of the US dollar and the British pound.

    While the evidence identifies a strong relationship between gold prices and the levels of exchange rates, another strand of research argues that changes in gold values are due to the volatility (rather than the level) of currency values. For example, Kaufmann (1989) and Sjaastad (2008), find some evidence that the price of gold is significantly related to volatility in the US dollar exchange rate. Capie (2005) also finds that gold serves as a hedge against volatility in the foreign exchange value of the dollar, however, this relationship seems to depend strongly on unpredictable political events.

    On the other hand, Scott (2002) argues that since gold is a real asset quoted in a variety of currencies, the fluctuations in gold prices by currency simply reflects the relative strength of the currency in which it is quoted.

    More recently, Joy (2011) finds that gold is not a safe-haven, but is a hedge against currency risk. Our paper can be considered a complement to Joy's as we focus on equity risk (Joy focuses on currency risk), while also taking Scott-Ram's critique seriously. Joy (2011) also provides one of the major changes in the literature in terms of the economic model that is used to test volatility and its transference. By using dynamic conditional correlation multivariate GARCH model, Joy (2011) estimates a system of a VAR model for multiple currencies.

    With a similar econometric analysis to Joy (2011), Papadamou (2014) evaluates US dollar, euro, British pound and Japanese yen. While both studies use multivariate GARCH and estimate the currencies against gold as a system thus capturing variance transference across currencies, the main difference between the two studies is the use of dynamic conditional correlations. Papadamou (2014) employs a constant conditional correlation VAR GARCH model instead of the DCC-GARCH model. Their results are very similar to Joy (2011). The dynamic nature of the conditional correlations does not seem to make much of a difference for the results.


    2.3. Equities

    A more recent stream of research has investigated the role of gold as a safe haven from equity volatility, rather than in macro or monetary fluctuations. Whaley (1993) introduced the concept of a volatility index, eventually bringing about the Chicago Board Options Exchange's trademark Volatility Index (VIX). The VIX is calculated using monthly and weekly SPX options listed on CBOE with expirations that are between 23 and 37 days.

    Cohen (2010) finds significant bi-directional causality between the VIX and gold returns during the low-volatility period of November 2004 through August 2007. During the higher volatility period from August 2007 to July 2009, they find that gold returns Granger-cause the VIX. On the other hand, Qadan (2012) find that the VIX Granger-causes gold futures, implying that gold is a safe haven asset from volatility.

    Gold seems to be uncorrelated with equities on average (making it a good hedge) and uncorrelated with equities during downturns, making it a safe-haven asset Baur (2010a). Coudert (2011) also finds that gold and equity returns are generally uncorrelated in the developed markets, implying that gold is viewed as a safe-haven asset by investors.

    The evidence is somewhat weaker in Baur (2010b), who find that gold offered safe-haven for only some of the developed equity markets, with much of the correlation due only to the most recent financial crisis.

    A good safety asset should have lower volatility during times of instability.Baur (2012) does not find this to be the case for gold; he finds that increases in gold prices presage increased volatility in equity markets. However, Baur argues that equity-market volatility feeds back upon gold markets, which paradoxically become less stable. Paradoxically, Baur argues that its safe-haven attributes render gold an ineffective safe haven.

    While majority of the existing literature on gold-equity relationship as a hedge and as a safe-haven, Gurgun (2014) evaluate gold for emerging and developing countries. As most of the US, UK, EU and Japanese markets are international and there is significant international cointegration between these markets and all other equity markets around the world, the study by Gurgun (2014) is important as they pay special attention to domestic investors. They show that gold can be considered a hedge as well as a safe haven security. This result is extended to most of the twenty eight countries they analyzed.

    More recently, Bredin (2015) analyze gold as a hedge and as a safe haven against volatility of equities in US, UK and German markets. They show that gold, up to one year, can be used as a hedge and as a safe haven. It is important to note that Bredin (2015) consider financial crises such as "Black Monday" (1987) and report that gold's performance as a safe haven extend to these periods.

    Our contribution to the literature is in two major points. Initially, we argue that the literature ignored the fact that gold is a a dollar-denominated security. It is true that the US dollar is the main currency for many of the gold exchanges around the world. However, in studying gold's safe-haven properties, dollar-denomination mixes variations in the dollar with variations in gold prices. We therefore propose a new denomination-free version of gold value by averaging daily percentage returns of gold for the US dollar, the euro and the British pound.

    Our second contribution is in terms of the safe haven definition for gold studies. While the prospect of realizing extreme negative returns is the reason investors seek safe haven, we argue that extreme volatility is the impetus for seeking safe haven. In other words: what is important is the risk, not just the realization, of negative returns. Thus, instead of evaluating extreme negative returns, we evaluate gold as a safe haven asset evaluating volatility.


    3. The Data

    The data for this study include security indexes and corresponding volatility indexes with daily frequency. The Chicago Board Options Exchange (CBOE) provide several volatility indexes for public use. Out of the twenty-nine volatility indexes we utilize seventeen by excluding indexes that are based on interest rates, commodities and individual stocks. Our focus is on the major US equity markets (S & P-500, S & P-100, Dow 30, NASDAQ 100 and Russell 2000), international equity markets (through ETFs such as EFA, EEM, FXI, EWZ), currencies (through an ETF FXE and actual foreign exchange rates) and volatility itself (through the actual VIX index itself). Volatility indexes are calculated following the option pricing model by Black (1973). The ETF EFA includes companies from Europe, Australia, Asia, and the Far East.§ The ETF EEM includes companies from emerging markets. And the ETFs FXI and EWZ include companies from China and Brazil, respectively.

    Available via http://www.cboe.com/products/vix-index-volatility/volatility-indexes

    More information about how volatility indexes are calculated can be found at http://www.cboe.com/products/vix-index-volatility

    §More detail available via https://www.ishares.com/us/products/239623/EFA

    Mode detail available via https://www.ishares.com/us/products/239637/EEM

    The data for the corresponding security indexes and ETFs are obtained from NASDAQ. The exchange rate and 10-year Treasury constant maturity rates are from the Federal Reserve Bank of St. Louis (Fred).** Finally, the data for daily gold fixings in US dollar, euro and British pound are obtained from London Bullion Market Association.††

    Available via http://nasdaq.com

    **Available via https://fred.stlouisfed.org/categories/15 and https://fred.stlouisfed.org/series/DGS10, respectively.

    ††Available via http://www.lbma.org.uk/

    The descriptives for all securities included in the study are provided in Table 1. In the table Δ refers to daily log difference change and t refers to trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. The upper part of the table provides the statistics for individual security indexes, ETFs, currencies, as well as for gold and 10-year Treasury constant maturity rate. The lower part of the table provides the same statistics for the corresponding volatility indexes (Ⅵ). Each variable's sample beginning date is provided as part of the descriptive statistics and range from year 2000 to year 2011. All variables are stationary based on the augmented Dickey-Fuller stationarity tests.

    Table 1. Descriptive statistics for volatility indexes, security indexes, ETFs and currencies included in the study. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. DF refers to the augmented Dickey-Fuller unit root test. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    Indexes and securities Notation First Mean Min. Max. Stdev. DF-z
    S & P 500 ΔGSPCt 01/03/2000 0.0001 -0.0947 0.1096 0.0123 -71.6886 ***
    NASDAQ 100 ΔNDXt 01/25/2001 0.0002 -0.1111 0.1185 0.0162 -67.3051 ***
    S & P 100 ΔOEXt 01/03/2000 0.0001 -0.0919 0.1066 0.0122 -72.1711 ***
    Dow 30 ΔDJIt 01/03/2000 0.0001 -0.0820 0.1051 0.0115 -71.4699 ***
    Russell 2000 ΔRUTt 01/05/2004 0.0003 -0.1261 0.0886 0.0153 -63.4079 ***
    iShares MSCI EAFE ETF ΔEFAt 01/03/2008 0.0000 -0.1184 0.1475 0.0159 -54.8648 ***
    iShares MSCI Emerging Markets ETF ΔEEMt 03/17/2011 0.0001 -0.0871 0.0605 0.0136 -41.5116 ***
    iShares China Large-Cap ETF ΔFXIt 03/17/2011 0.0001 -0.0744 0.0682 0.0156 -40.7328 ***
    iShares MSCI Brazil Capped ETF ΔEWZt 03/17/2011 -0.0003 -0.1782 0.0848 0.0201 -39.8716 ***
    U.S. / Euro Foreign Exchange Rate ΔDEXUSEUt 01/03/2007 -0.0000 -0.0300 0.0462 0.0064 -49.8627 ***
    Japan / U.S. Foreign Exchange Rate ΔDEXJPUSt 01/03/2007 -0.0000 -0.0522 0.0334 0.0069 -51.2129 ***
    U.S. / U.K. Foreign Exchange Rate ΔDEXUSUKt 01/03/2007 -0.0001 -0.0817 0.0443 0.0063 -47.8114 ***
    CurrencyShares Euro ETF ΔFXEt 03/15/2010 -0.0001 -0.0273 0.0312 0.0060 -42.6582 ***
    London Gold Fixing (USD, EUR, GBP) ΔGoldAvg,t 01/04/2000 0.0003 -0.0949 0.0757 0.0104 -67.2360 ***
    10-Year Treasury Constant Maturity Rate ΔTreasuryt 01/04/2000 -0.0003 -0.1850 0.0963 0.0192 -65.0828 ***
    Volatility indexes (Ⅵ) Notation First Mean Min. Max. Stdev. DF-z
    CBOE Ⅵ ΔVIXt 01/03/2000 -0.0002 -0.3506 0.4960 0.0665 -72.3218 ***
    CBOE NASDAQ Ⅵ ΔVXNt 01/25/2001 -0.0003 -0.3130 0.3622 0.0567 -66.5832 ***
    CBOE S & P 100 Ⅵ ΔVXOt 01/03/2000 -0.0002 -0.3815 0.5323 0.0743 -75.9089 ***
    CBOE DJIA Ⅵ ΔVXDt 01/03/2000 -0.0002 -0.4081 0.5281 0.0641 -74.4737 ***
    CBOE Russell 2000 Ⅵ ΔRVXt 01/05/2004 -0.0001 -0.2515 0.3613 0.0544 -61.6919 ***
    CBOE Short-Term Ⅵ ΔVXSTt 01/04/2011 -0.0004 -0.5399 0.8114 0.1207 -44.7343 ***
    CBOE 3-Month Ⅵ ΔVXVt 12/05/2007 -0.0003 -0.2340 0.3284 0.0460 -53.7712 ***
    CBOE Mid-Term Ⅵ ΔVXMTt 01/08/2008 -0.0002 -0.1779 0.2032 0.0333 -51.9707 ***
    CBOE EFA ETF Ⅵ ΔVXEFAt 01/03/2008 -0.0003 -0.6867 0.4548 0.0738 -54.9421 ***
    CBOE Emerging Markets ETF Ⅵ ΔVXEEMt 03/17/2011 -0.0005 -0.2981 0.5049 0.0615 -41.0036 ***
    CBOE China ETF Ⅵ ΔVXFXIt 03/17/2011 -0.0004 -0.1851 0.3658 0.0499 -39.9588 ***
    CBOE Brazil ETF Ⅵ ΔVXEWZt 03/17/2011 -0.0001 -0.6196 0.3240 0.0501 -39.8790 ***
    CBOE/CME FX Euro Ⅵ ΔEUVIXt 01/03/2007 -0.0009 -0.7397 0.4572 0.0501 -53.8616 ***
    CBOE/CME FX Yen Ⅵ ΔJYVIXt 01/03/2007 -0.0002 -0.2801 0.4123 0.0498 -50.4963 ***
    CBOE/CME FX British Pound Ⅵ ΔBPVIXt 01/03/2007 -0.0005 -0.4387 0.3713 0.0430 -46.0753 ***
    CBOE EuroCurrency ETF Ⅵ ΔEVZt 03/15/2010 -0.0002 -0.3981 0.2891 0.0441 -42.3998 ***
    CBOE VIX of VIX Index ΔVVIXt 01/04/2007 -0.0000 -0.2023 0.4511 0.0507 -55.6217 ***
     | Show Table
    DownLoad: CSV

    4. Models and Empirical Results

    The empirical evaluation of gold as a hedging instrument as well as a safe haven asset is done with two separate but complementary econometric analyses. Initially, we test the lead and lag relationships for gold vs. individual security returns and gold vs. volatility indexes. These tests are also performed for Treasury rates to compare the two assets and to evaluate the gold's performance against a well known safety asset. For the gold vs. security returns: a lead by gold over security returns, within this context, would indicate that investors would follow gold returns to make decisions in investments of assets. A lead by securities over gold would indicate that investors move to gold following returns in assets. For the gold vs. volatility indexes: a lead by gold over volatility indexes would indicate that gold could be an indicator of future volatility. A lead by volatility index over gold would indicate flight to gold following volatility.

    The lead and lag relationships are tested using Granger (1969) causality model as follows:

    Δyit=α1i+2j=1β1ijΔyi,tj+2k=1γ1ikΔxi,tk+ϵit (1)
    Δxit=α2i+2j=1β2ijΔxi,tj+2k=1γ2ikΔyi,tk+eit (2)

    The Wald test for non-causality tests the following restrictions:

    ΔxitΔyit:γ1i1=γ1i2=0 (3)
    ΔyitΔxit:γ2i1=γ2i2=0 (4)

    Within the equations above, y variable is either gold or Treasury rates and the x variable is one of the evaluated indexes, volatility indexes, ETFs, or currencies.

    Since our study is similar in methodology to Joy (2011), we replicate his DCC-MGARCH methodology and extend it to our analysis. Our DCC-MGARCH model and estimation results are provided in the supplementary section of this study. Dynamic conditional correlation type multivariate GARCH is estimated as a system where the error covariances and conditional correlations evolve according to autoregressive processes (the details of the method are spelled out in Appendix B). It also depends on the very high number of parameters estimated and many related assumptions. Our methodology depends on fewer assumptions and require fewer parameters to be estimated. Our results are strikingly similar to the results of the DCC-MGARCH model.

    Table 2 provides the estimation results for gold and index returns while Table Table 3 provides the results for gold and volatility indexes. We find that gold returns lead RUT, EFA, EEM and US dollar British pound exchange rates at 5% statistical significance or better. There is however no lead by gold over major US indexes such as S & P-500, S & P-100, NASDAQ 100 and Dow 30. For the lead over gold, S & P-500, EEM (developing mkts), and EWZ (Brazil) are significant. Although, S & P-500 is significant, the lack of evidence for other major US equity index subdues this result. Overall, the lead-lag between gold and index returns could be described as weak at best.

    Table 2. Granger causality results for index returns vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    (y) Index (x) Fyx Fxy
    ΔGoldAvg,t ΔGSPCt 4.7831 * 6.0327 **
    ΔNDXt 1.6692 4.0493
    ΔOEXt 4.2406 3.5607
    ΔDJIt 4.6973 * 2.9024
    ΔRUTt 13.6058 *** 2.7519
    ΔEFAt 9.7182 *** 4.6010
    ΔEEMt 6.3377 ** 8.5638 **
    ΔFXIt 4.4468 5.2435 *
    ΔEWZt 5.9886 * 14.6628 ***
    ΔDEXUSEUt 2.9670 0.5260
    ΔDEXJPUSt 2.0194 4.3104
    ΔDEXUSUKt 7.2210 ** 1.5380
    ΔFXEt 0.2532 0.7204
    ΔTreasuryt ΔGSPCt 0.8286 2.9438
    ΔNDXt 2.6544 0.5934
    ΔOEXt 1.4370 3.4482
    ΔDJIt 1.5316 3.4515
    ΔRUTt 1.3880 1.0946
    ΔEFAt 0.5737 1.3131
    ΔEEMt 2.8405 0.6586
    ΔFXIt 2.1950 3.2119
    ΔEWZt 0.2640 0.8301
    ΔDEXUSEUt 3.8920 0.4882
    ΔDEXJPUSt 64.4994 *** 0.7178
    ΔDEXUSUKt 1.5812 0.5689
    ΔFXEt 2.1633 3.1163
     | Show Table
    DownLoad: CSV
    Table 3. Granger causality results for volatility indexes vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    (y) VIX (x) Fyx Fxy
    ΔGoldAvg,t ΔVIXt 1.4944 21.3515 ***
    ΔVXNt 1.4606 14.2577 ***
    ΔVXOt 3.1946 19.9518 ***
    ΔVXDt 0.8862 18.8243 ***
    ΔRVXt 7.4843 ** 23.5169 ***
    ΔVXSTt 1.7546 1.9814
    ΔVXVt 3.1133 3.9230
    ΔVXMTt 1.9674 4.1000
    ΔVXEFAt 0.8779 9.9007 ***
    ΔVXEEMt 4.5914 1.4013
    ΔVXFXIt 6.9811 ** 0.7013
    ΔVXEWZt 9.2742 *** 5.9522 *
    ΔEUVIXt 2.5932 2.0354
    ΔJYVIXt 0.3256 1.7725
    ΔBPVIXt 1.0087 2.6306
    ΔEVZt 1.6753 3.4109
    ΔVVIXt 3.1193 7.9859 **
    ΔTreasuryt ΔVIXt 4.5685 1.7019
    ΔVXNt 5.2928 * 3.6698
    ΔVXOt 1.4935 3.5417
    ΔVXDt 6.1271 ** 1.9826
    ΔRVXt 3.8767 1.7863
    ΔVXSTt 4.1921 0.9201
    ΔVXVt 1.9423 3.4563
    ΔVXMTt 4.6692 * 3.2958
    ΔVXEFAt 6.2733 ** 1.8868
    ΔVXEEMt 2.2029 0.6462
    ΔVXFXIt 2.6211 2.3506
    ΔVXEWZt 3.0170 0.0450
    ΔEUVIXt 17.1424 *** 0.6144
    ΔJYVIXt 7.5397 ** 4.6280 *
    ΔBPVIXt 10.6203 *** 3.9090
    ΔEVZt 9.7183 *** 1.2067
    ΔVVIXt 6.1986 ** 7.6153 **
     | Show Table
    DownLoad: CSV

    Compared to gold, Treasury rates do not perform any better. The only lead Treasury rates have over returns is for the US dollar and Japanese yen.

    For the lead and lag relationship between gold and volatility indexes however the results are significantly different. We find that all major US equity volatility indexes and developed market ETF EFA (developed markets) volatility lead gold returns: a clear and strong evidence of flight to gold phenomenon. Treasury rates do not have such a lead. Instead, we find that Treasury rates lead currency volatilities. Interestingly, the volatility index for volatility index itself, VVIX, leads gold as well as Treasuries.

    The second set of tests evaluates the contemporaneous relations for gold vs. individual security returns, and gold vs. volatility indexes. Similar to the lead-lag tests, Treasury rates are also evaluated to compare the performance of gold vs. a well known security for hedging. Estimations for contemporaneous relationships provide evidence of gold's hedging potential and safe-haven qualities. The results for gold are compared to those of Treasuries, which are well-known as hedges and safe haven securities. In this context, a negative contemporaneous relationship between gold and index returns implies a hedging quality for gold (Baur, 2010a) while a positive relationship would implies a diversification quality for gold. Treasuries requires a further interpretation. As we analyze the daily changes in the 10 year Treasury rates, a positive relationship between Treasury rate and index returns would mean a hedging quality for Treasuries as bond prices decrease since interest rates increase.

    Contemporaneous relationships are evaluated with a GARCH (1, 1) model Bollerslev (1986) as follows:

    xt=β0+ni=1βiyti+ϵtσ2t=α0+qi=1αiϵ2ti+pi=1γiσ2ti where ϵt|δt1N(0,σ2t) (5)

    Table 4 provides the GARCH(1, 1) estimation results for gold vs. index returns while Table 5 provides the results for gold vs. volatility indexes. We find significant evidence of negative correlation between gold returns and index returns for major US equity indexes and ETF EFA (developed markets). These results provide strong evidence for the hedging quality of gold for major US and developed market equities. Currencies also have significant negative correlations with gold returns. There is no significant correlation for FXE which is the tradable US dollar euro ETF. However, the correlation is significant for the actual US dollar and euro exchange rate.

    Table 4. GARCH(1, 1) estimation results for index returns vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    Index ΔGoldAvg,t Constant χ2 N
    ΔGSPCt -0.0334 *** 0.0005 *** 13.39 4,261
    ΔNDXt -0.0545 *** 0.0007 *** 20.81 4,002
    ΔOEXt -0.0374 *** 0.0004 *** 17.74 4,261
    ΔDJIt -0.0364 *** 0.0005 *** 18.20 4,261
    ΔRUTt -0.0075 0.0005 ** 0.28 3,289
    ΔEFAt -0.0343 ** 0.0003 4.65 2,317
    ΔEEMt 0.0583 ** 0.0002 6.36 1,535
    ΔFXIt 0.0163 0.0003 0.40 1,535
    ΔEWZt 0.1090 *** -0.0003 9.29 1,535
    ΔDEXUSEUt 0.1003 *** 0.0000 154.04 2,462
    ΔDEXJPUSt -0.1437 *** 0.0001 269.18 2,458
    ΔDEXUSUKt 0.0459 *** -0.0000 26.88 2,352
    ΔFXEt 0.0158 -0.0001 2.47 1,780
    Index ΔTreasuryt Constant χ2 N
    ΔGSPCt 0.1598 *** 0.0004 *** 815.41 4,191
    ΔNDXt 0.1723 *** 0.0006 *** 580.77 3,936
    ΔOEXt 0.1559 *** 0.0004 *** 792.39 4,191
    ΔDJIt 0.1532 *** 0.0005 *** 794.15 4,191
    ΔRUTt 0.1996 *** 0.0004 ** 539.35 3,237
    ΔEFAt 0.1739 *** 0.0003 473.21 2,279
    ΔEEMt 0.1595 *** 0.0003 236.27 1,511
    ΔFXIt 0.1887 *** 0.0003 252.66 1,511
    ΔEWZt 0.1794 *** -0.0003 100.50 1,511
    ΔDEXUSEUt 0.0102 ** 0.0000 5.35 2,514
    ΔDEXJPUSt 0.1086 *** 0.0001 582.46 2,510
    ΔDEXUSUKt 0.0223 *** 0.0000 22.94 2,405
    ΔFXEt 0.0028 -0.0001 0.38 1,754
     | Show Table
    DownLoad: CSV
    Table 5. GARCH(1, 1) estimation results for volatility indexes vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    Index ΔGoldAvg,t Constant χ2 N
    ΔVIXt 0.1988 *** -0.0012 11.26 4,261
    ΔVXNt 0.1114 ** -0.0013 * 3.86 4,002
    ΔVXOt 0.1987 *** -0.0010 6.97 4,261
    ΔVXDt 0.1506 *** -0.0012 7.52 4,261
    ΔRVXt 0.0109 -0.0010 0.04 3,289
    ΔVXSTt 0.1471 0.0000 0.77 1,584
    ΔVXVt 0.0720 -0.0007 2.55 2,331
    ΔVXMTt 0.0674 ** -0.0007 4.06 2,314
    ΔVXEFAt 0.2180 ** -0.0009 4.99 2,317
    ΔVXEEMt -0.1470 -0.0014 2.51 1,535
    ΔVXFXIt -0.1221 * -0.0009 3.21 1,535
    ΔVXEWZt -0.1605 ** -0.0009 5.43 1,535
    ΔEUVIXt 0.0850 -0.0021 *** 1.59 2,462
    ΔJYVIXt 0.1625 ** -0.0019 ** 5.68 2,458
    ΔBPVIXt 0.0511 -0.0026 *** 0.84 2,352
    ΔEVZt 0.0743 -0.0013 0.74 1,780
    ΔVVIXt 0.0550 0.0003 0.96 2,558
    Index ΔTreasuryd Constant χ2 N
    ΔVIXt -0.9462 *** -0.0020 ** 624.49 4,191
    ΔVXNt -0.7416 *** -0.0019 ** 519.51 3,936
    ΔVXOt -1.0382 *** -0.0020 ** 631.82 4,191
    ΔVXDt -0.8874 *** -0.0018 ** 615.91 4,191
    ΔRVXt -0.7607 *** -0.0019 ** 496.48 3,237
    ΔVXSTt -1.6591 *** -0.0036 240.60 1,559
    ΔVXVt -0.6665 *** -0.0011 635.67 2,296
    ΔVXMTt -0.4743 *** -0.0010 * 628.77 2,276
    ΔVXEFAt -0.8274 *** -0.0022 * 326.80 2,279
    ΔVXEEMt -0.7551 *** -0.0023 188.22 1,511
    ΔVXFXIt -0.5155 *** -0.0013 142.95 1,511
    ΔVXEWZt -0.3999 *** -0.0009 81.98 1,511
    ΔEUVIXt -0.3444 *** -0.0019 ** 116.06 2,514
    ΔJYVIXt -0.2838 *** -0.0014 * 69.36 2,510
    ΔBPVIXt -0.2542 *** -0.0023 *** 68.28 2,405
    ΔEVZt -0.3281 *** -0.0011 70.12 1,754
    ΔVVIXt -0.5325 *** 0.0000 239.48 2,518
     | Show Table
    DownLoad: CSV

    As a comparison, Treasury rates have positive statistically significant correlations with all of the index returns except for the FXE (the dollar-euro ETF). Notice also that the test statistics for US dollar and euro exchange rate are also quite low albeit still statistically significant. As such, these results also provide strong evidence for Treasuries to have hedge qualities.

    Table 5 provides the evidence needed to deem gold as a safe haven. The volatility indexes for US equities are positively and statistically correlated with gold. Likewise, the volatility index for developed market equities (EFA) are also positively correlated with gold. Short-term and medium term volatility indexes also have positive correlations with gold.

    While the safe haven evidence is quite strong for gold in terms of volatilities for US equities and developed market equities, the evidence for Treasury rates is overwhelming. Treasuries are a safe haven to all volatilities included in our study.


    5. Concluding remarks

    The diversification, hedging, and safe haven qualities of gold have received considerable attention in the literature especially after the 2008 crisis. The evidence have been mixed with various methodologies. In this study, we emphasize two shortcomings of the existing literature. First, we argue that as long as gold is denominated in US dollar, its true value cannot be evaluated. As a remedy, we propose daily average return of gold in US dollar, euro and British pound fixings. Second, the interpretation of safe haven in the literature have been limited to realized excessive negative returns. However, we argue that the investors are enticed to seek a safe haven from the possibility of excessive negative returns as indicated by high volatility. Thus, as a remedy, tested gold against the volatility indexes provided by CBOE. Our results provide strong evidence that gold is both a hedge instrument and a safe haven. Based on the results provided in Tables 4 and 5, we posit that Treasuries may be a better safe haven asset than gold.


    6. Conflict of Interest

    All authors declare no conflicts of interest in this paper.


    A. Supplementary: DCC-MGARCH

    Any VAR can be written in companion form:

    Yt=βYt1+ϵt (A.1)

    Expressed in this way Yt1 can contain various lags of Y (not just one) and may also contain exogenous X variables of arbitrary lags. The error term is modeled as

    ϵtN(μ,σ2)=N(0,Ht) (A.2)

    where Ht is a matrix of conditional covariances. The subscript on Ht indicates that the matrix is time-varying. Rather than estimating each of the components of a completely unique Ht matrix each time period, Engle (2002) suggests that the components of the matrix evolve according to particular constraints employing the familiar GARCH(p, q) process. Specifically, Engle suggested that the variance/covariance matrix Ht be decomposed as:

    Ht=D1/2tRtD1/2t. (A.3)

    Here, Dt is a diagonal matrix of conditional variances with each entry (σ2it) evolving according to a GARCH(p, q) process:

    σ2it=αi0+qj=1αijϵ2i,tj+pj=1ϕijσ2tj (A.4)

    The off-diagonal elements of Dt are zero. The matrix Dt is decomposed into its factors (D1/2t) so the entries in D1/2t are conditional standard deviations. Even though the entries of Dt are all on the diagonal so that there are no non-zero covariances, Engle allows for covariance between the GARCH error terms via the matrix Rt. The matrix Rt is a matrix of time-varying "conditional quasicorrelations." Here again, we wish to avoid estimating each of the components of a matrix separately for each time period. We would quickly run out of degrees of freedom. Therefore, Engle supposes that Rt also evolves in a constrained fashion. Specifically,

    Rt=diag(Qt)1/2Qtdiag(Qt)1/2 (A.5)

    and

    Qt=(1λ1λ2)R+λ1(D1/2tϵt)(D1/2tϵt)+λ2Qt1. (A.6)

    The matrix Qt is a matrix of conditional correlations. It is modeled as a weighted average of three terms: the constant conditional correlation R, last period's time-varying conditional correlation, Qt1, such that Qt is partially autoregressive, and standardized squared residuals. The λ1 and λ2 terms are weights for averaging. The λ2 term also functions like the adjustment parameters in a VECM model, nudging the Qt1 matrix of conditional correlations toward is value in Qt. In the case where function like the adjustment parameters in a VECM λ1=λ2=0, then there is no adjustment, and Qt does not vary; it is equal to a constant correlation matrix R.

    Table A.1. DCC-MGARCH estimation results for index returns vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    y x y x
    (y) Index (x) Constant Arch(1) Garch(1) Constant Arch(1) Garch(1) chi2 N
    ΔGoldAvg,t ΔGSPCd 0.0000 *** 0.0942 *** 0.8893 *** 0.0000 *** 0.0988 *** 0.8867 *** 23.02 4,259
    ΔNDXd 0.0000 *** 0.0838 *** 0.9011 *** 0.0000 *** 0.0787 *** 0.9125 *** 13.22 4,000
    ΔOEXd 0.0000 *** 0.0942 *** 0.8894 *** 0.0000 *** 0.1028 *** 0.8832 *** 26.96 4,259
    ΔDJId 0.0000 *** 0.0941 *** 0.8896 *** 0.0000 *** 0.1037 *** 0.8806 *** 19.17 4,259
    ΔRUTd 0.0000 *** 0.0731 *** 0.9175 *** 0.0000 *** 0.0781 *** 0.9027 *** 25.80 3,287
    ΔEFAd 0.0000 *** 0.0775 *** 0.9035 *** 0.0000 *** 0.1142 *** 0.8812 *** 23.06 2,315
    ΔEEMd 0.0000 *** 0.0955 *** 0.8640 *** 0.0000 ** 0.1133 *** 0.8688 *** 29.98 1,533
    ΔFXId 0.0000 *** 0.0912 *** 0.8693 *** 0.0000 ** 0.0824 *** 0.8979 *** 18.52 1,533
    ΔDEXUSEUd 0.0000 *** 0.0777 *** 0.9026 *** 0.0000 *** 0.0407 *** 0.9563 *** 3.12 2,460
    ΔDEXJPUSd 0.0000 *** 0.0852 *** 0.8959 *** 0.0000 *** 0.0524 *** 0.9375 *** 7.53 2,456
    ΔDEXUSUKd 0.0000 *** 0.0723 *** 0.9073 *** 0.0000 ** 0.0696 *** 0.9262 *** 3.45 2,350
    ΔFXEd 0.0000 *** 0.0871 *** 0.8707 *** 0.0000 ** 0.0307 *** 0.9660 *** 5.08 1,778
    ΔTreasuryd ΔGSPCd 0.0000 *** 0.0495 *** 0.9496 *** 0.0000 *** 0.1024 *** 0.8809 *** 24.11 4,189
    ΔNDXd 0.0000 *** 0.0443 *** 0.9548 *** 0.0000 *** 0.0768 *** 0.9134 *** 15.47 3,934
    ΔOEXd 0.0000 *** 0.0497 *** 0.9495 *** 0.0000 *** 0.1079 *** 0.8765 *** 29.10 4,189
    ΔDJId 0.0000 *** 0.0494 *** 0.9496 *** 0.0000 *** 0.1096 *** 0.8731 *** 20.64 4,189
    ΔRUTd 0.0000 ** 0.0418 *** 0.9577 *** 0.0000 *** 0.0823 *** 0.8941 *** 19.71 3,235
    ΔEFAd 0.0000 *** 0.0504 *** 0.9427 *** 0.0000 *** 0.1169 *** 0.8740 *** 16.92 2,277
    ΔEEMd 0.0000 ** 0.0448 *** 0.9424 *** 0.0000 *** 0.1103 *** 0.8619 *** 13.23 1,509
    ΔFXId 0.0000 ** 0.0430 *** 0.9453 *** 0.0000 ** 0.0747 *** 0.8986 *** 12.85 1,509
    ΔEWZd 0.0000 ** 0.0455 *** 0.9423 *** 0.0000 *** 0.1208 *** 0.8625 *** 5.66 1,509
    ΔDEXUSEUd 0.0000 ** 0.0549 *** 0.9421 *** 0.0000 *** 0.0404 *** 0.9565 *** 13.50 2,512
    ΔDEXJPUSd 0.0000 ** 0.0586 *** 0.9408 *** 0.0000 *** 0.0549 *** 0.9340 *** 82.66 2,508
    ΔDEXUSUKd 0.0000 ** 0.0578 *** 0.9394 *** 0.0000 ** 0.0701 *** 0.9262 *** 3.13 2,403
    ΔFXEd 0.0000 ** 0.0531 *** 0.9326 *** 0.0000 ** 0.0294 *** 0.9674 *** 8.58 1,752
     | Show Table
    DownLoad: CSV
    Table A.2. Causality test results based on DCC-MGARCH estimation for index returns vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    (y) Index (x) Fyx Fxy Corr(x, y)
    ΔGoldAvg,t ΔGSPCd 6.28 ** 3.66 -0.0467 ***
    ΔNDXd 5.25 * 2.75 -0.0431
    ΔOEXd 6.53 ** 2.09 -0.0511 *
    ΔDJId 9.94 *** 0.67 -0.0578 *
    ΔRUTd 6.70 ** 7.64 ** -0.0074
    ΔEFAd 4.78 * 3.65 -0.0216
    ΔEEMd 6.39 ** 19.96 *** 0.0442
    ΔFXId 4.92 * 9.65 *** 0.0307
    ΔDEXUSEUd 0.70 1.36 0.1897 ***
    ΔDEXJPUSd 0.23 2.85 -0.2685 ***
    ΔDEXUSUKd 1.48 1.14 0.0648
    ΔFXEd 0.21 2.07 0.0427
    ΔTreasuryd ΔGSPCd 2.65 2.18 0.3148 ***
    ΔNDXd 3.01 0.06 0.3154 ***
    ΔOEXd 2.54 2.66 0.3146 ***
    ΔDJId 2.81 2.14 0.3270 ***
    ΔRUTd 3.81 0.01 0.3100 ***
    ΔEFAd 1.45 0.35 0.3184 ***
    ΔEEMd 9.19 ** 1.64 0.1934 **
    ΔFXId 6.04 ** 3.77 0.2437 ***
    ΔEWZd 1.48 1.17 0.0571
    ΔDEXUSEUd 9.66 *** 1.03 0.0488
    ΔDEXJPUSd 61.57 *** 0.85 0.4154 ***
    ΔDEXUSUKd 0.83 0.65 0.0926
    ΔFXEd 1.56 1.95 0.0496
     | Show Table
    DownLoad: CSV
    Table A.3. DCC-MGARCH estimation results for volatility indexes vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    y x y x
    (y) VIX (x) Constant Arch(1) Garch(1) Constant Arch(1) Garch(1) chi2 N
    ΔGoldAvg,t ΔVIXd 0.0000 *** 0.0934 *** 0.8902 *** 0.0003 *** 0.1044 *** 0.8316 *** 55.56 4,259
    ΔVXNd 0.0000 *** 0.0835 *** 0.9017 *** 0.0001 *** 0.0924 *** 0.8748 *** 28.47 4,000
    ΔVXOd 0.0000 *** 0.0938 *** 0.8903 *** 0.0003 *** 0.1077 *** 0.8448 *** 79.25 4,259
    ΔVXDd 0.0000 *** 0.0940 *** 0.8898 *** 0.0003 *** 0.1057 *** 0.8284 *** 53.61 4,259
    ΔRVXd 0.0000 *** 0.0724 *** 0.9185 *** 0.0002 *** 0.0823 *** 0.8447 *** 49.48 3,287
    ΔVXMTd 0.0000 *** 0.0776 *** 0.9031 *** 0.0001 *** 0.1644 *** 0.7394 *** 11.57 2,312
    ΔVXEEMd 0.0000 *** 0.0906 *** 0.8716 *** 0.0004 ** 0.0856 *** 0.8157 *** 11.52 1,533
    ΔVXFXId 0.0000 *** 0.0854 *** 0.8761 *** 0.0001 *** 0.0997 *** 0.8382 *** 7.63 1,533
    ΔEUVIXd 0.0000 *** 0.0800 *** 0.8996 *** 0.0003 *** 0.1371 *** 0.7476 *** 10.73 2,460
    ΔJYVIXd 0.0000 *** 0.0794 *** 0.9013 *** 0.0002 *** 0.1421 *** 0.7839 *** 11.49 2,456
    ΔBPVIXd 0.0000 *** 0.0782 *** 0.9018 *** 0.0002 *** 0.1263 *** 0.7874 *** 11.22 2,350
    ΔEVZd 0.0000 *** 0.0903 *** 0.8690 *** 0.0000 * 0.0246 *** 0.9637 *** 19.16 1,778
    ΔTreasuryt ΔVIXd 0.0000 *** 0.0483 *** 0.9505 *** 0.0003 *** 0.1132 *** 0.8087 *** 41.09 4,189
    ΔVXNd 0.0000 *** 0.0444 *** 0.9544 *** 0.0001 *** 0.1014 *** 0.8530 *** 25.97 3,934
    ΔVXOd 0.0000 *** 0.0482 *** 0.9507 *** 0.0003 *** 0.1149 *** 0.8274 *** 55.68 4,189
    ΔVXDd 0.0000 *** 0.0479 *** 0.9510 *** 0.0003 *** 0.1222 *** 0.7912 *** 35.41 4,189
    ΔRVXd 0.0000 ** 0.0423 *** 0.9571 *** 0.0002 *** 0.0911 *** 0.8275 *** 21.58 3,235
    ΔVXSTd 0.0000 ** 0.0456 *** 0.9461 *** 0.0034 *** 0.1053 *** 0.6495 *** 23.35 1,557
    ΔVXVd 0.0000 *** 0.0481 *** 0.9437 *** 0.0002 *** 0.1572 *** 0.7320 *** 20.11 2,294
    ΔVXMTd 0.0000 *** 0.0474 *** 0.9444 *** 0.0001 *** 0.1639 *** 0.7287 *** 16.73 2,274
    ΔVXEFAd 0.0000 *** 0.0496 *** 0.9421 *** 0.0009 *** 0.1524 *** 0.6695 *** 22.62 2,277
    ΔVXEEMd 0.0000 ** 0.0483 *** 0.9413 *** 0.0004 ** 0.0797 *** 0.8213 *** 8.19 1,509
    ΔVXFXId 0.0000 ** 0.0443 *** 0.9428 *** 0.0002 *** 0.1058 *** 0.8137 *** 7.66 1,509
    ΔVXEWZd 0.0000 ** 0.0452 *** 0.9419 *** 0.0003 *** 0.1484 *** 0.7463 *** 6.81 1,509
    ΔEUVIXd 0.0000 ** 0.0538 *** 0.9443 *** 0.0001 *** 0.0655 *** 0.8960 *** 24.70 2,512
    ΔJYVIXd 0.0000 ** 0.0576 *** 0.9411 *** 0.0002 *** 0.1330 *** 0.7847 *** 15.63 2,508
    ΔBPVIXd 0.0000 ** 0.0557 *** 0.9421 *** 0.0001 *** 0.1145 *** 0.8122 *** 30.35 2,403
    ΔEVZd 0.0000 ** 0.0486 *** 0.9406 *** 0.0000 * 0.0219 *** 0.9673 *** 29.43 1,752
    ΔVVIXd 0.0000 ** 0.0584 *** 0.9404 *** 0.0005 *** 0.1341 *** 0.6576 *** 26.91 2,516
     | Show Table
    DownLoad: CSV
    Table A.4. Causality test results based on DCC-MGARCH estimation for volatility indexes vs. Gold and vs. 10-Year Treasury Constant Maturity Rate. Δ refers to daily log difference change and t refers to the trading day. Avg for gold refers to daily average return for gold in US dollar, euro and British pound. *, ** and *** refer to statistical significance at the 10%, 5% and 1% respectively.
    (y) VIX (x) Fyx Fxy Corr(x, y)
    ΔGoldAvg,t ΔVIXd 1.34 15.48 *** 0.0304
    ΔVXNd 0.34 14.52 *** 0.0179
    ΔVXOd 2.11 14.80 *** 0.0308
    ΔVXDd 0.42 13.00 *** 0.0208
    ΔRVXd 6.59 ** 22.49 *** -0.0025
    ΔVXMTd 2.52 3.60 0.0061
    ΔVXEEMd 3.31 2.91 -0.0001
    ΔVXFXId 4.32 0.32 0.0632
    ΔEUVIXd 3.51 2.58 0.0090
    ΔJYVIXd 0.97 7.36 ** 0.0328
    ΔBPVIXd 0.64 2.73 0.0032
    ΔEVZd 2.98 2.05 0.0299
    ΔTreasuryt ΔVIXd 6.34 ** 3.55 -0.2647 ***
    ΔVXNd 6.93 ** 2.82 -0.2667 ***
    ΔVXOd 1.60 5.14 * -0.2770 ***
    ΔVXDd 5.73 * 6.37 ** -0.2641 ***
    ΔRVXd 7.68 ** 0.31 -0.2652 ***
    ΔVXSTd 5.82 * 2.87 -0.3060 ***
    ΔVXVd 4.98 * 3.05 -0.3622 ***
    ΔVXMTd 6.10 ** 2.06 -0.3722 ***
    ΔVXEFAd 2.53 3.02 -0.2676 ***
    ΔVXEEMd 2.95 4.00 -0.2516 ***
    ΔVXFXId 0.63 3.95 -0.2322 ***
    ΔVXEWZd 3.53 0.05 -0.1259 *
    ΔEUVIXd 16.70 *** 0.25 -0.1680
    ΔJYVIXd 5.89 * 2.58 -0.1582 ***
    ΔBPVIXd 16.64 *** 1.90 -0.1330
    ΔEVZd 9.07 ** 3.21 -0.1428 **
    ΔVVIXd 8.81 ** 10.85 *** -0.2767 ***
     | Show Table
    DownLoad: CSV

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