Computational role of structure in neural activity and connectivity

Trends Cogn Sci. 2024 Mar 28:S1364-6613(24)00056-1. doi: 10.1016/j.tics.2024.03.003. Online ahead of print.

Abstract

One major challenge of neuroscience is identifying structure in seemingly disorganized neural activity. Different types of structure have different computational implications that can help neuroscientists understand the functional role of a particular brain area. Here, we outline a unified approach to characterize structure by inspecting the representational geometry and the modularity properties of the recorded activity and show that a similar approach can also reveal structure in connectivity. We start by setting up a general framework for determining geometry and modularity in activity and connectivity and relating these properties with computations performed by the network. We then use this framework to review the types of structure found in recent studies of model networks performing three classes of computations.

Keywords: neural coding; neural network models; neural representations.

Publication types

  • Review