We consider statistical-mechanics models for spin systems built on hierarchical structures, which provide a simple example of non-mean-eld framework. We show that the coupling decay with spin distance can give rise to peculiar features and phase diagrams much richer that their mean-eld counterpart. In particular, we consider the Dyson model, mimicking ferromagnetism in lattices, and we prove the existence of a number of meta-stabilities, beyond the ordered state, which get stable in the thermodynamic limit. Such a feature is retained when the hierarchical structure is coupled with the Hebb rule for learning, hence mimicking the modular architecture of neurons, and gives rise to an associative network able to perform both as a serial processor as well as a parallel processor, depending crucially on the external stimuli and on the rate of interaction decay with distance; however, those emergent multitasking features reduce the network capacity with respect to the mean-eld counterpart. The analysis is accomplished through statistical mechanics, graph theory, signal-to-noise technique and numerical simulations in full consistency. Our results shed light on the biological complexity shown by real networks, and suggest future directions for understanding more realistic models

Retrieval capabilities of hierarchical networks: from Dyson to Hopfield / AGLIARI, ELENA; BARRA, ADRIANO; GALLUZZI, ANDREA; GUERRA, Francesco; TANTARI, DANIELE; TAVANI, FLAVIA. - In: PHYSICAL REVIEW LETTERS. - ISSN 0031-9007. - ELETTRONICO. - 114:(2015), pp. 028103-028103. [10.1103/PhysRevLett.114.028103]

Retrieval capabilities of hierarchical networks: from Dyson to Hopfield

AGLIARI, ELENA;TANTARI, DANIELE;
2015

Abstract

We consider statistical-mechanics models for spin systems built on hierarchical structures, which provide a simple example of non-mean-eld framework. We show that the coupling decay with spin distance can give rise to peculiar features and phase diagrams much richer that their mean-eld counterpart. In particular, we consider the Dyson model, mimicking ferromagnetism in lattices, and we prove the existence of a number of meta-stabilities, beyond the ordered state, which get stable in the thermodynamic limit. Such a feature is retained when the hierarchical structure is coupled with the Hebb rule for learning, hence mimicking the modular architecture of neurons, and gives rise to an associative network able to perform both as a serial processor as well as a parallel processor, depending crucially on the external stimuli and on the rate of interaction decay with distance; however, those emergent multitasking features reduce the network capacity with respect to the mean-eld counterpart. The analysis is accomplished through statistical mechanics, graph theory, signal-to-noise technique and numerical simulations in full consistency. Our results shed light on the biological complexity shown by real networks, and suggest future directions for understanding more realistic models
2015
114
028103
028103
AGLIARI, ELENA; BARRA, ADRIANO; GALLUZZI, ANDREA; GUERRA, Francesco; TANTARI, DANIELE; TAVANI, FLAVIA
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1154472
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