On the number of limit cycles in asymmetric neural networks
Sungmin Hwang, Viola Folli, Enrico Lanza, Giorgio Parisi, Giancarlo, Ruocco, Francesco Zamponi

TL;DR
This paper analyzes how the structure of recurrent connectivity matrices in asymmetric neural networks affects the number and types of limit cycles, extending previous theoretical work to finite networks with varying symmetry.
Contribution
It provides a theoretical evaluation of the mean number of attractors of any length for different degrees of symmetry in neural network connectivity matrices.
Findings
Connectivity symmetry influences attractor types.
Extended theoretical model to finite networks.
Quantified mean number of attractors for various symmetries.
Abstract
The comprehension of the mechanisms at the basis of the functioning of complexly interconnected networks represents one of the main goals of neuroscience. In this work, we investigate how the structure of recurrent connectivity influences the ability of a network to have storable patterns and in particular limit cycles, by modeling a recurrent neural network with McCulloch-Pitts neurons as a content-addressable memory system. A key role in such models is played by the connectivity matrix, which, for neural networks, corresponds to a schematic representation of the "connectome": the set of chemical synapses and electrical junctions among neurons. The shape of the recurrent connectivity matrix plays a crucial role in the process of storing memories. This relation has already been exposed by the work of Tanaka and Edwards, which presents a theoretical approach to evaluate the mean number…
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