The objective of this research is to realise structural learning within a Boltzmann machine (BM), which enables the effective solution of problems defined as mixed integer quadratic programming. Simulation results show that computation time is reduced by up to one-fifth compared to conventional BMs. The computational efficiency of the resulting double-layer BM is approximately expressed as the ratio n divided by N, where n is the number of selected units (neurons/nodes) and N is the total number of units. The double-layer BM was applied to efficiently solve a mean-variance problem using mathematical programming with two objectives: the minimisation of risk and the maximisation of expected return. Finally, the effectiveness of our method is ...
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
The classical Boltzmann machine is understood as a neural network proposed by Hinton and his colleag...
We define a new network structure to realize a continuous version of the Boltzmann Machine (BM). Ba...
In order to solve a problem efficiently, a structural learning of Boltzmann machine had been propose...
In this paper we present a formal model of the Boltzmann machine and a discussion of two different a...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
The learning process in Boltzmann machines is computationally very expensive. The computational comp...
Many pattern recognition problems are viewed as problems that can be solved using a window based art...
In this paper we formulate the Expectation Maximization (EM) algorithm for Boltzmann Machines and we...
Contains fulltext : 112713.pdf (preprint version ) (Open Access
International audienceThis paper presents a new approach for learning transition function in state r...
International audienceAbstract Background Boltzmann machines are energy-based models that have been ...
The computotionol power of massively parallel networks of simple processing elements resides in the ...
The machine learning techniques for Markov random fields are fundamental in various fields involving...
Contains fulltext : 112742.pdf (preprint version ) (Open Access
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
The classical Boltzmann machine is understood as a neural network proposed by Hinton and his colleag...
We define a new network structure to realize a continuous version of the Boltzmann Machine (BM). Ba...
In order to solve a problem efficiently, a structural learning of Boltzmann machine had been propose...
In this paper we present a formal model of the Boltzmann machine and a discussion of two different a...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
The learning process in Boltzmann machines is computationally very expensive. The computational comp...
Many pattern recognition problems are viewed as problems that can be solved using a window based art...
In this paper we formulate the Expectation Maximization (EM) algorithm for Boltzmann Machines and we...
Contains fulltext : 112713.pdf (preprint version ) (Open Access
International audienceThis paper presents a new approach for learning transition function in state r...
International audienceAbstract Background Boltzmann machines are energy-based models that have been ...
The computotionol power of massively parallel networks of simple processing elements resides in the ...
The machine learning techniques for Markov random fields are fundamental in various fields involving...
Contains fulltext : 112742.pdf (preprint version ) (Open Access
We present a new statistical learning paradigm for Boltzmann machines based on a new inference pri...
The classical Boltzmann machine is understood as a neural network proposed by Hinton and his colleag...
We define a new network structure to realize a continuous version of the Boltzmann Machine (BM). Ba...