Extended Anderson Criticality in Heavy-Tailed Neural Networks

Asem Wardak and Pulin Gong
Phys. Rev. Lett. 129, 048103 – Published 22 July 2022
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Abstract

We investigate the emergence of complex dynamics in networks with heavy-tailed connectivity by developing a non-Hermitian random matrix theory. We uncover the existence of an extended critical regime of spatially multifractal fluctuations between the quiescent and active phases. This multifractal critical phase combines features of localization and delocalization and differs from the edge of chaos in classical networks by the appearance of universal hallmarks of Anderson criticality over an extended region in phase space. We show that the rich nonlinear response properties of the extended critical regime can account for a variety of neural dynamics such as the diversity of timescales, providing a computational advantage for persistent classification in a reservoir setting.

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  • Received 15 December 2021
  • Revised 8 May 2022
  • Accepted 5 July 2022

DOI:https://doi.org/10.1103/PhysRevLett.129.048103

© 2022 American Physical Society

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Authors & Affiliations

Asem Wardak and Pulin Gong*

  • School of Physics, University of Sydney, New South Wales 2006, Australia

  • *Corresponding author. pulin.gong@sydney.edu.au

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Issue

Vol. 129, Iss. 4 — 22 July 2022

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