We consider a three-layer Sejnowski machine and show that features learnt via contrastive divergence have a dual representation as patterns in a dense associative memory of order P = 4. The latter is known to be able to Hebbian store an amount of patterns scaling as NP -1, where N denotes the number of constituting binary neurons interacting P wisely. We also prove that, by keeping the dense associative network far from the saturation regime (namely, allowing for a number of patterns scaling only linearly with N, while P > 2) such a system is able to perform pattern recognition far below the standard signal-to-noise threshold. In particular, a network with P = 4 is able to retrieve information whose intensity is O(1) even in the presence...
We study pattern recognition in linear Hopfield type networks of N neurons where each neuron is conn...
In this paper we present a modification of the strongly diluted Hopfield model in which the dilution...
Restricted Boltzmann machines are key tools in machine learning and are described by the energy func...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Recently, Hopfield and Krotov introduced the concept of dense associative memories [DAM] (close to s...
The problem of neural network association is to retrieve a previously memorized pattern from its noi...
Abstract—The problem of neural network association is to retrieve a previously memorized pattern fro...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
In this thesis we explore pattern mining and deep learning. Often seen as orthogonal, we show that t...
We study pattern recognition in linear Hopfield type networks of N neurons where each neuron is conn...
In this paper we present a modification of the strongly diluted Hopfield model in which the dilution...
Restricted Boltzmann machines are key tools in machine learning and are described by the energy func...
The task of a neural associative memory is to retrieve a set of previously memorized patterns from t...
Recently, Hopfield and Krotov introduced the concept of dense associative memories [DAM] (close to s...
The problem of neural network association is to retrieve a previously memorized pattern from its noi...
Abstract—The problem of neural network association is to retrieve a previously memorized pattern fro...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
In this work we study a Hebbian neural network, where neurons are arranged according to a hierarchic...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
We adapt belief-propagation techniques to study the equilibrium behavior of a bipartite spin glass, ...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
In this thesis we explore pattern mining and deep learning. Often seen as orthogonal, we show that t...
We study pattern recognition in linear Hopfield type networks of N neurons where each neuron is conn...
In this paper we present a modification of the strongly diluted Hopfield model in which the dilution...
Restricted Boltzmann machines are key tools in machine learning and are described by the energy func...