Efficient, probabilistic analysis of combinatorial neural codes
- URL: http://arxiv.org/abs/2210.10492v1
- Date: Wed, 19 Oct 2022 11:58:26 GMT
- Title: Efficient, probabilistic analysis of combinatorial neural codes
- Authors: Thomas F Burns, Irwansyah
- Abstract summary: neural networks encode inputs in the form of combinations of individual neurons' activities.
These neural codes present a computational challenge due to their high dimensionality and often large volumes of data.
We apply methods previously applied to small examples and apply them to large neural codes generated by experiments.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Artificial and biological neural networks (ANNs and BNNs) can encode inputs
in the form of combinations of individual neurons' activities. These
combinatorial neural codes present a computational challenge for direct and
efficient analysis due to their high dimensionality and often large volumes of
data. Here we improve the computational complexity -- from factorial to
quadratic time -- of direct algebraic methods previously applied to small
examples and apply them to large neural codes generated by experiments. These
methods provide a novel and efficient way of probing algebraic, geometric, and
topological characteristics of combinatorial neural codes and provide insights
into how such characteristics are related to learning and experience in neural
networks. We introduce a procedure to perform hypothesis testing on the
intrinsic features of neural codes using information geometry. We then apply
these methods to neural activities from an ANN for image classification and a
BNN for 2D navigation to, without observing any inputs or outputs, estimate the
structure and dimensionality of the stimulus or task space. Additionally, we
demonstrate how an ANN varies its internal representations across network depth
and during learning.
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