Research article Special Issues

New ideas for brain modelling 5

  • Received: 13 October 2020 Accepted: 04 December 2020 Published: 10 December 2020
  • This paper describes a process for combining patterns and features, to guide a search process and make predictions. It is based on the functionality that a human brain might have, which is a highly distributed network of simple neuronal components that can apply some level of matching and cross-referencing over retrieved patterns. The process uses memory in a dynamic way and it is directed through the pattern matching. The paper firstly describes the mechanisms for neuronal search, memory and prediction. The paper then presents a formal language (Cognitive Process Language) for defining cognitive processes, that is, pattern-based sequences and transitions. The language can define an outer framework for concept sets that are linked to perform the act. The language also has a mathematical basis, allowing for the rule construction to be consistent. The CPL is novel in some ways. Firstly, it uses 3 entities for each statement, where the object source is also required. This roots the act and allows for cross-referencing that can create a behaviour script automatically. It also allows natural cycles to be derived from the script that can define the brain-like processes. Now, both static memory and dynamic process hierarchies can be built as tree structures. A theory about linking can suggest that nodes in different regions link together when generally they represent the same thing.

    Citation: Kieran Greer. New ideas for brain modelling 5[J]. AIMS Biophysics, 2021, 8(1): 41-56. doi: 10.3934/biophy.2021003

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  • This paper describes a process for combining patterns and features, to guide a search process and make predictions. It is based on the functionality that a human brain might have, which is a highly distributed network of simple neuronal components that can apply some level of matching and cross-referencing over retrieved patterns. The process uses memory in a dynamic way and it is directed through the pattern matching. The paper firstly describes the mechanisms for neuronal search, memory and prediction. The paper then presents a formal language (Cognitive Process Language) for defining cognitive processes, that is, pattern-based sequences and transitions. The language can define an outer framework for concept sets that are linked to perform the act. The language also has a mathematical basis, allowing for the rule construction to be consistent. The CPL is novel in some ways. Firstly, it uses 3 entities for each statement, where the object source is also required. This roots the act and allows for cross-referencing that can create a behaviour script automatically. It also allows natural cycles to be derived from the script that can define the brain-like processes. Now, both static memory and dynamic process hierarchies can be built as tree structures. A theory about linking can suggest that nodes in different regions link together when generally they represent the same thing.


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    [1] Greer K (2020) New ideas for brain modelling 6. AIMS Biophysics 7: 308-322.
    [2] Greer K (2019) New ideas for brain modelling 3. Cogn Syst Res 55: 1-13.
    [3] Greer K (2017) New ideas for brain modelling 4. BRAIN. Broad Research in Artificial Intelligence and Neuroscience 9: 155-167.
    [4] Greer K (2016) A repeated signal difference for recognising patterns. BRAIN. Broad Research in Artificial Intelligence and Neuroscience 7: 139-147.
    [5] Greer K (2014) Concept trees: Building dynamic concepts from semi-structured data using nature-inspired methods. Complex System Modelling and Control through Intelligent Soft Computations, Studies in Fuzziness and Soft Computing Germany: 221-252.
    [6] Greer K (2013) Turing: then, now and still key. Artificial Intelligence, Evolutionary Computing and Metaheuristics Berlin: 43-62.
    [7] Greer K (2011) Symbolic neural networks for clustering higher-level concepts. NAUN Int J Comput 5: 378-386.
    [8] Anderson JA, Silverstein JW, Ritz SA, et al. (1977) Distinctive features, categorical perception, and probability learning: Some applications of a neural model. Psychol Rev 84: 413.
    [9] Hawkins J, Blakeslee S (2004) Times books. On Intelligence .
    [10] Hinton GE, Osindero S, Teh YW (2006) A fast learning algorithm for deep belief nets. Neural Comput 18: 1527-1554.
    [11] Curbera F, Goland Y, Klein J, et al. Business process execution language for web services BPEL (2002) .Available from: https://www.oasis-open.org/committees/download.php/2046/BPEL V1-1 May 5 2003 Final.pdf.
    [12] Thiagarajan RK, Srivastava AK, Pujari AK, et al. (2002) BPML: A process modeling language for dynamic business models. Proceedings Fourth IEEE International Workshop on Advanced Issues of E-Commerce and Web-Based Information Systems (WECWIS 2002) IEEE, 222-224.
    [13] Rockstrom A, Saracco R (1982) SDL-CCITT specification and description language. IEEE T Commun 30: 1310-1318.
    [14] FIPA The foundation for intelligent physical agents Available from: http://www.fipa.org/.
    [15] Bellman R (1957) A Markovian decision process. J Math Mech 6: 679-684.
    [16] Guigon E, Grandguillaume P, Otto I, et al. (1994) Neural network models of cortical functions based on the computational properties of the cerebral cortex. J Physiol-Paris 88: 291-308.
    [17] Dehaene S, Changeux JP, Nadal JP (1987) Neural networks that learn temporal sequences by selection. P Natl Acad Sci 84: 2727-2731.
    [18] Hawkins J, Ahmad S (2016) Why neurons have thousands of synapses, a theory of sequence memory in neocortex. Front in Neural Circuit 10: 23.
    [19] Yuste R (2011) Dendritic spines and distributed circuits. Neuron 71: 772-781.
    [20] Kandel ER (2001) The molecular biology of memory storage: a dialogue between genes and synapses. Science 294: 1030-1038.
    [21] Deco G, Jirsa VK, Robinson PA, et al. (2008) The dynamic brain: from spiking neurons to neural masses and cortical fields. PLoS Comput Biol 4: e1000092.
    [22] Mastrandrea R, Gabrielli A, Piras F, et al. (2017) Organization and hierarchy of the human functional brain network lead to a chain-like core. Sci Rep 7: 1-13.
    [23] Meunier D, Lambiotte R, Bullmore ET (2010) Modular and hierarchically modular organization of brain networks. Front Neurosci 4: 200.
    [24] Watts DJ, Strogatz SH (1998) Collective dynamics of ‘small-world’ networks. Nature 393: 440-442.
    [25] Rubinov M, Sporns O, van Leeuwen C, et al. (2009) Symbiotic relationship between brain structure and dynamics. BMC Neurosci 10: 1-18.
    [26] Gong P, van Leeuwen C (2004) Evolution to a small-world network with chaotic units. EPL (Europhysics Letters) 67: 328.
    [27] IBM (2003) An architectural blueprint for autonomic computing. IBM and Autonomic Computing .
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