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      Explosive neural networks via higher-order interactions in curved statistical manifolds

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          Abstract

          Higher-order interactions underlie complex phenomena in systems such as biological and artificial neural networks, but their study is challenging due to the lack of tractable standard models. By leveraging the maximum entropy principle in curved statistical manifolds, here we introduce curved neural networks as a class of prototypical models for studying higher-order phenomena. Through exact mean-field descriptions, we show that these curved neural networks implement a self-regulating annealing process that can accelerate memory retrieval, leading to explosive order-disorder phase transitions with multi-stability and hysteresis effects. Moreover, by analytically exploring their memory capacity using the replica trick near ferromagnetic and spin-glass phase boundaries, we demonstrate that these networks enhance memory capacity over the classical associative-memory networks. Overall, the proposed framework provides parsimonious models amenable to analytical study, revealing novel higher-order phenomena in complex network systems.

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          Author and article information

          Journal
          05 August 2024
          Article
          2408.02326
          c5c1e129-0ef7-4614-8d58-c41107c94afa

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          cond-mat.dis-nn cond-mat.stat-mech cs.IT math.IT nlin.AO stat.ML

          Condensed matter,Numerical methods,Information systems & theory,Theoretical physics,Machine learning,Nonlinear & Complex systems

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