In this work we develop analytical techniques to investigate a broad class of associative neural networks set in the high-storage regime. These techniques translate the original statistical–mechanical problem into an analytical-mechanical one which implies solving a set of partial differential equations, rather than tackling the canonical probabilistic route. We test the method on the classical Hopfield model – where the cost function includes only two-body interactions (i.e., quadratic terms) – and on the “relativistic” Hopfield model – where the (expansion of the) cost function includes p-body (i.e., of degree) contributions. Under the replica symmetric assumption, we paint the phase diagrams of these models by obtaining the explicit expression of their free energy as a function of the model parameters (i.e., noise level and memory storage). Further, since for non-pairwise models ergodicity breaking is non necessarily a critical phenomenon, we develop a fluctuation analysis and find that criticality is preserved in the relativistic model.

Generalized Guerra’s interpolation schemes for dense associative neural networks / Agliari, Elena; Alemanno, Francesco; Barra, Adriano; Fachechi, Alberto. - In: NEURAL NETWORKS. - ISSN 0893-6080. - (2020).

Generalized Guerra’s interpolation schemes for dense associative neural networks

Elena Agliari;Adriano Barra
;
Alberto Fachechi
2020

Abstract

In this work we develop analytical techniques to investigate a broad class of associative neural networks set in the high-storage regime. These techniques translate the original statistical–mechanical problem into an analytical-mechanical one which implies solving a set of partial differential equations, rather than tackling the canonical probabilistic route. We test the method on the classical Hopfield model – where the cost function includes only two-body interactions (i.e., quadratic terms) – and on the “relativistic” Hopfield model – where the (expansion of the) cost function includes p-body (i.e., of degree) contributions. Under the replica symmetric assumption, we paint the phase diagrams of these models by obtaining the explicit expression of their free energy as a function of the model parameters (i.e., noise level and memory storage). Further, since for non-pairwise models ergodicity breaking is non necessarily a critical phenomenon, we develop a fluctuation analysis and find that criticality is preserved in the relativistic model.
2020
dense associative neural networks; rigorous statistical mechanics
01 Pubblicazione su rivista::01a Articolo in rivista
Generalized Guerra’s interpolation schemes for dense associative neural networks / Agliari, Elena; Alemanno, Francesco; Barra, Adriano; Fachechi, Alberto. - In: NEURAL NETWORKS. - ISSN 0893-6080. - (2020).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1399165
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