Satisfiability transition in asymmetric neural networks

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Abstract

Asymmetry in the synaptic interactions between neurons plays a crucial role in determining the memory storage and retrieval properties of recurrent neural networks. In this work, we analyze the problem of storing random memories in a network of neurons connected by a synaptic matrix with a definite degree of asymmetry. We study the corresponding satisfiability and clustering transitions in the space of solutions of the constraint satisfaction problem associated with finding synaptic matrices given the memories. We find, besides the usual SAT/UNSAT transition at a critical number of memories to store in the network, an additional transition for very asymmetric matrices, where the competing constraints (definite asymmetry vs memories storage) induce enough frustration in the problem to make it impossible to solve. This finding is particularly striking in the case of a single memory to store, where no quenched disorder is present in the system.

Original languageEnglish
Article number305001
JournalJournal of Physics A: Mathematical and Theoretical
Volume55
Issue number30
DOIs
Publication statusPublished - 29 Jul 2022
Externally publishedYes

Keywords

  • constraint satisfaction problems
  • disordered systems
  • recurrent neural networks

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