The Boltzmann distribution plays a key role in the field of optimization as it directly connects this field with that of probability. Basically, given a function to optimize, the Boltzmann distribution associated to this function assigns higher probability to the candidate solutions with better quality. Therefore, an efficient sampling of the Boltzmann distribution would turn optimization into an easy task. However, inference tasks on this distribution imply performing operations over an exponential number of terms, which hinders its applicability. As a result, the scientific community has investigated how the structure of objective functions is translated to probabilistic properties in order to simplify the corresponding Boltzmann distribu...
. The analogy between combinatorial optimization and statistical mechanics has proven to be a fruitf...
We study the distribution of objective function values of a combinatorial optimization problem defin...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
In the framework of analytic combinatorics, Boltzmann models give rise to efficient algorithms for t...
AbstractIn the framework of analytic combinatorics, Boltzmann models give rise to efficient algorith...
This article proposes a surprisingly simple framework for the random generation of combinatorial con...
Estimation of distribution algorithms construct an explicit model of the problem to be solved, and ...
This note proposes a new framework for random generation of combinatorial configurations based on wh...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
Estimation of distribution algorithms (EDA) have been proposed as an extension of genetic algorithms...
The potential of Boltzmann machines to cope with difficult combinatorial optimization problems is in...
This paper is devoted to the construction of Boltzmann samplers according to various distributions, ...
International audienceFor p(x), q(x) probability distributions, we consider the problem of efficient...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
. The analogy between combinatorial optimization and statistical mechanics has proven to be a fruitf...
We study the distribution of objective function values of a combinatorial optimization problem defin...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...
We perform a stochastic analysis of evolutionary algorithms. The analysis centers on the question ho...
In the framework of analytic combinatorics, Boltzmann models give rise to efficient algorithms for t...
AbstractIn the framework of analytic combinatorics, Boltzmann models give rise to efficient algorith...
This article proposes a surprisingly simple framework for the random generation of combinatorial con...
Estimation of distribution algorithms construct an explicit model of the problem to be solved, and ...
This note proposes a new framework for random generation of combinatorial configurations based on wh...
We discuss the problem of solving (approximately) combinatorial optimization problems on a Boltzmann...
Estimation of distribution algorithms (EDA) have been proposed as an extension of genetic algorithms...
The potential of Boltzmann machines to cope with difficult combinatorial optimization problems is in...
This paper is devoted to the construction of Boltzmann samplers according to various distributions, ...
International audienceFor p(x), q(x) probability distributions, we consider the problem of efficient...
Estimation of Distribution Algorithms (EDAs) require flexible probability models that can be efficie...
. The analogy between combinatorial optimization and statistical mechanics has proven to be a fruitf...
We study the distribution of objective function values of a combinatorial optimization problem defin...
Several recent publications investigated Markov-chain modelling of linear optimization by a $(1,\lam...