Biological and social networks have recently attracted great attention from physicists. Among several aspects, two main ones may be stressed: a non-trivial topology of the graph describing the mutual interactions between agents and, typically, imitative, weighted, interactions. Despite such aspects being widely accepted and empirically confirmed, the schemes currently exploited in order to generate the expected topology are based on a priori assumptions and, in most cases, implement constant intensities for links. Here we propose a simple shift [-1, + 1] -> [0, + 1] in the definition of patterns in a Hopfield model: a straightforward effect is the conversion of frustration into dilution. In fact, we show that by varying the bias of pattern ...
Weighted scale-free networks with topology-dependent interactions are studied. It is shown that the ...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...
Through a redefinition of patterns in a Hopfield-like model, we introduce and develop an approach to...
We consider a generalization of the Hopfield model, where the entries of patterns are Gaussian and d...
We consider a generalization of the Hopfield model, where the entries of patterns are Gaussian and d...
In the past decades complex networks and their behavior have attracted much attention. In the real w...
We propose a statistical mechanics approach to a coevolving spin system with an adaptive network of ...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
This study of network structure and phase transitions focuses on three systems with different dynami...
Abstract. In this article we give an in depth overview of the recent advances in the field of equili...
We consider the Ising model for two interacting groups of spins embedded in an Erd¨os–R´enyi random...
Weighted scale-free networks with topology-dependent interactions are studied. It is shown that the ...
Weighted scale-free networks with topology-dependent interactions are studied. It is shown that the ...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...
Through a redefinition of patterns in a Hopfield-like model, we introduce and develop an approach to...
We consider a generalization of the Hopfield model, where the entries of patterns are Gaussian and d...
We consider a generalization of the Hopfield model, where the entries of patterns are Gaussian and d...
In the past decades complex networks and their behavior have attracted much attention. In the real w...
We propose a statistical mechanics approach to a coevolving spin system with an adaptive network of ...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
Randomly coupled Ising spins constitute the classical model of collective phenomena in disordered sy...
This study of network structure and phase transitions focuses on three systems with different dynami...
Abstract. In this article we give an in depth overview of the recent advances in the field of equili...
We consider the Ising model for two interacting groups of spins embedded in an Erd¨os–R´enyi random...
Weighted scale-free networks with topology-dependent interactions are studied. It is shown that the ...
Weighted scale-free networks with topology-dependent interactions are studied. It is shown that the ...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...
A symmetrically dilute Hopfield model with a Hebbian learning rule is used to study the effects of g...