Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mining, error correction codes) and complex theoretical models on the focus of scientific investigation. As for the research branch, neural networks are handled and studied by psychologists, neurobiologists, engineers, mathematicians and theoretical physicists. In particular, in theoretical physics, the key instrument for the quantitative analysis of neural networks is statistical mechanics. From this perspective, here, we review attractor networks: starting from ferromagnets and spin-glass models, we discuss the underlying philosophy and we recover the strand paved by Hopfield, Amit-Gutfreund-Sompolinky. As a sideline, in this walk we derive...
Macroscopic spin ensembles with brainlike features such as nonlinearity, stochasticity, self-oscilla...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
SIGLEAvailable from British Library Document Supply Centre- DSC:D182994 / BLDSC - British Library Do...
Cette contribution présente le formalisme et quelques résultats importants spécifiques de l'étude de...
This paper presents an overview of diverse topics that are seemingly different but interrelated, wit...
In the paper thermodynamic properties of an artificial neural network are analyzed in a way analogou...
The link between the structure of a neural network and its attractor states is investigated, with a ...
International audienceThis document presents the material of two lectures on statistical physics and...
These notes attempt a self-contained introduction into statistical field theory applied to neural ne...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
Macroscopic spin ensembles with brainlike features such as nonlinearity, stochasticity, self-oscilla...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...
Neural networks are nowadays both powerful operational tools (e.g., for pattern recognition, data mi...
Abstract: Neural networks are nowadays both powerful operational tools (e.g., for pattern recognitio...
A summary is presented of the statistical mechanical theory of learning a rule with a neural network...
SIGLEAvailable from British Library Document Supply Centre- DSC:D182994 / BLDSC - British Library Do...
Cette contribution présente le formalisme et quelques résultats importants spécifiques de l'étude de...
This paper presents an overview of diverse topics that are seemingly different but interrelated, wit...
In the paper thermodynamic properties of an artificial neural network are analyzed in a way analogou...
The link between the structure of a neural network and its attractor states is investigated, with a ...
International audienceThis document presents the material of two lectures on statistical physics and...
These notes attempt a self-contained introduction into statistical field theory applied to neural ne...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
The effort to build machines that are able to learn and undertake tasks such as datamining, image pr...
Macroscopic spin ensembles with brainlike features such as nonlinearity, stochasticity, self-oscilla...
We consider statistical-mechanics models for spin systems built on hierarchical structures, which pr...
Abstract. In the present paper, the neural networks theory based on presumptions of the Ising model ...