Neural population geometry: An approach for understanding biological and artificial neural networks
SueYeon Chung, L. F. Abbott

TL;DR
This paper reviews how geometric analysis of high-dimensional neural representations enhances understanding of both biological and artificial neural networks across various functions and modalities.
Contribution
It introduces neural population geometry as a unifying framework for analyzing neural representations in neuroscience and machine learning.
Findings
Geometric approaches reveal representation untangling in perception.
A geometric theory explains classification capacity.
Neural geometry applies across sensory modalities and brain regions.
Abstract
Advances in experimental neuroscience have transformed our ability to explore the structure and function of neural circuits. At the same time, advances in machine learning have unleashed the remarkable computational power of artificial neural networks (ANNs). While these two fields have different tools and applications, they present a similar challenge: namely, understanding how information is embedded and processed through high-dimensional representations to solve complex tasks. One approach to addressing this challenge is to utilize mathematical and computational tools to analyze the geometry of these high-dimensional representations, i.e., neural population geometry. We review examples of geometrical approaches providing insight into the function of biological and artificial neural networks: representation untangling in perception, a geometric theory of classification capacity,…
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