We consider statistical-mechanics models for spin systems built on hierarchical structures, which provide a simple example of non-mean-field framework. We show that the coupling decay with spin distance can give rise to peculiar features and phase diagrams much richer than their mean-field counterpart. In particular, we consider the Dyson model, mimicking ferromagnetism in lattices, and we prove the existence of a number of metastabilities, beyond the ordered state, which become 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 single pattern ret...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Restricted Boltzmann machines are described by the Gibbs measure of a bipartite spin glass, which in...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
Hierarchical networks are attracting a renewal interest for modeling the organization of a number of...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
In this work, we first revise some extensions of the standard Hopfield model in the low storage limi...
In this work, we first revise some extensions of the standard Hopfield model in the low storage limi...
The mean field Hopfield model is the paradigm for serial processing networks: a system able to retri...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Restricted Boltzmann machines are described by the Gibbs measure of a bipartite spin glass, which in...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
In this paper, we introduce and investigate the statistical mechanics of hierarchical neural network...
Hierarchical networks are attracting a renewal interest for modeling the organization of a number of...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
In this work, we first revise some extensions of the standard Hopfield model in the low storage limi...
In this work, we first revise some extensions of the standard Hopfield model in the low storage limi...
The mean field Hopfield model is the paradigm for serial processing networks: a system able to retri...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We present results for two difFerent kinds of high-order connections between neurons acting as corre...
Restricted Boltzmann machines are described by the Gibbs measure of a bipartite spin glass, which in...