Recurrent neural network models for working memory of continuous variables: activity manifolds, connectivity patterns, and dynamic codes
Christopher J. Cueva, Adel Ardalan, Misha Tsodyks, Ning Qian

TL;DR
This paper explores how recurrent neural networks represent continuous variables in working memory, revealing the importance of activity manifolds, connectivity patterns, and dynamic coding strategies, and relates these findings to human psychophysical behavior.
Contribution
It introduces a novel framework showing that neural activity forms Clifford tori for continuous variables, and highlights the role of dynamic codes and connectivity patterns in working memory.
Findings
Neural activity forms a Clifford torus for representing two orientations.
Connectivity patterns support the Clifford torus structure.
Dynamic coding prevents overwriting of stored information.
Abstract
Many daily activities and psychophysical experiments involve keeping multiple items in working memory. When items take continuous values (e.g., orientation, contrast, length, loudness) they must be stored in a continuous structure of appropriate dimensions. We investigate how this structure is represented in neural circuits by training recurrent networks to report two previously shown stimulus orientations. We find the activity manifold for the two orientations resembles a Clifford torus. Although a Clifford and standard torus (the surface of a donut) are topologically equivalent, they have important functional differences. A Clifford torus treats the two orientations equally and keeps them in orthogonal subspaces, as demanded by the task, whereas a standard torus does not. We find and characterize the connectivity patterns that support the Clifford torus. Moreover, in addition to…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Memory and Neural Mechanisms
