International audienceMaximum entropy models provide the least constrained probability distributions that reproduce statistical properties of experimental datasets. In this work we characterize the learning dynamics that maximizes the log-likelihood in the case of large but finite datasets. We first show how the steepest descent dynamics is not optimal as it is slowed down by the inhomogeneous curvature of the model parameters' space. We then provide a way for rectifying this space which relies only on dataset properties and does not require large computational efforts. We conclude by solving the long-time limit of the parameters' dynamics including the randomness generated by the systematic use of Gibbs sampling. In this stochastic framewo...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
The success of evolutionary algorithms, in particular Factorized Distribution Algorithms (FDA), for ...
We propose a framework for learning hidden-variable models by optimizing entropies, in which entropy...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Optimisation problems typically involve finding the ground state (i.e. the minimum energy configurat...
In the first part of this thesis, we examine the computational complexity of three fundamental stati...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
ICML-2023We address the challenge of exploration in reinforcement learning (RL) when the agent opera...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
The success of evolutionary algorithms, in particular Factorized Distribution Algorithms (FDA), for ...
We propose a framework for learning hidden-variable models by optimizing entropies, in which entropy...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas of bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Maximum entropy models have become popular statistical models in neuroscience and other areas in bio...
Optimisation problems typically involve finding the ground state (i.e. the minimum energy configurat...
In the first part of this thesis, we examine the computational complexity of three fundamental stati...
The need to estimate smooth probability distributions (a.k.a. probability densities) from finite sam...
We are interested in distributions which are derived as a maximumentropy distribution given a set of...
ICML-2023We address the challenge of exploration in reinforcement learning (RL) when the agent opera...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
Abstract. We consider the problem of estimating an unknown probability distribution from samples usi...
We consider the maximum entropy Markov chain inference approach to characterize the collective stati...
The success of evolutionary algorithms, in particular Factorized Distribution Algorithms (FDA), for ...