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    Artificial Life Conference Proceedings
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    Proceedings Volume Cover
    ALIFE 2019: The 2019 Conference on Artificial Life
    July 29–August 2, 2019
    Online
    Conference Sponsors:
    • The International Society for Artificial Life

    Self-optimization in a Hopfield neural network based on theC. elegans connectome

    Alejandro Morales,
    Alejandro Morales
    Institute for Applied Mathematics and Systems Research, National Autonomous University of Mexico, Mexico
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    Tom Froese
    Tom Froese
    Institute for Applied Mathematics and Systems Research, National Autonomous University of Mexico, Mexico
    Center for the Sciences of Complexity, National Autonomous University of Mexico, Mexico
    Search for other works by this author on:
    Alejandro Morales
    Institute for Applied Mathematics and Systems Research, National Autonomous University of Mexico, Mexico
    Tom Froese
    Institute for Applied Mathematics and Systems Research, National Autonomous University of Mexico, Mexico
    Center for the Sciences of Complexity, National Autonomous University of Mexico, Mexico
    Paper No: isal_a_00200, pp. 448-453; 6 pages
    Published Online:July 01 2019
    Citation

    Alejandro Morales,Tom Froese; July 29–August 2, 2019. "Self-optimization in a Hopfield neural network based on theC. elegans connectome." Proceedings of theALIFE 2019: The 2019 Conference on Artificial Life.ALIFE 2019: The 2019 Conference on Artificial Life. Online. (pp. pp. 448-453). ASME.https://doi.org/10.1162/isal_a_00200

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      Abstract

      It has recently been demonstrated that a Hopfield neural network that learns its own attractor configurations, for instance by repeatedly resetting the network to an arbitrary state and applying Hebbian learning after convergence, is able to form an associative memory of its attractors and thereby facilitate future convergences on better attractors. This process of structural self-optimization has so far only been demonstrated on relatively small artificial neural networks with random or highly regular and constrained topologies, and it remains an open question to what extent it can be generalized to more biologically realistic topologies. In this work, we therefore test this process by running it on the connectome of the widely studied nematode worm,C. elegans, the only living being whose neural system has been mapped in its entirety. Our results demonstrate, for the first time, that the self-optimization process can be generalized to bigger and biologically plausible networks. We conclude by speculating that the reset-convergence mechanism could find a biological equivalent in the sleep-wake cycle inC. elegans.

      Issue Section:
      Neural Networks
      This content is only available as a PDF.
      © 2019 Massachusetts Institute of Technology Published under a Creative Commons Attribution 4.0 International (CC BY 4.0) license
      2019
      Massachusetts Institute of Technology

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