This paper deals with the taking into account a given set of realizations as constraints in the Kullback-Leibler minimum principle, which is used as a probabilistic learning algorithm. This permits the effective integration of data into predictive models. We consider the probabilistic learning of a random vector that is made up of either a quantity of interest (unsupervised case) or the couple of the quantity of interest and a control parameter (supervised case). A training set of independent realizations of this random vector is assumed to be given and to be generated with a prior probability measure that is unknown. A target set of realizations of the QoI is available for the two considered cases. The framework is the one of non-Gaussian ...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
In a first part, we present a mathematical analysis of a general methodology of a probabilistic lear...
Probabilistic DFA inference is the problem of inducing a stochastic regular grammar from a positive...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
Plenary LectureInternational audienceIn Machine Learning (generally devoted to big-data case), the p...
The paper has two major themes. The first part of the paper establishes certain general results for ...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
Abstract. In this paper we study algorithms to find a Gaussian approximation to a target measure def...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
In this paper, we provide a straightforward proof of an important, but nevertheless little known, re...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
We present new tools from probability theory that can be applied to the analysis of learning algorit...
In a first part, we present a mathematical analysis of a general methodology of a probabilistic lear...
Probabilistic DFA inference is the problem of inducing a stochastic regular grammar from a positive...
International audienceAn extension of the probabilistic learning on manifolds (PLoM), recently intro...
Plenary LectureInternational audienceIn Machine Learning (generally devoted to big-data case), the p...
The paper has two major themes. The first part of the paper establishes certain general results for ...
Probabilistic inference is at the core of many recent advances in machine learning. Unfortunately, ...
International audienceThis paper presents novel mathematical results in support of the probabilistic...
International audienceIn this presentation, we tackle the challenge of mitigating the high cost of a...
Abstract. In this paper we study algorithms to find a Gaussian approximation to a target measure def...
We consider the problem of learning conditional independencies, ex-pressed as a Markov network, from...
In this paper, we provide a straightforward proof of an important, but nevertheless little known, re...
We propose and analyze a distribution learning algorithm for variable memory length Markov processes...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
NOTE: Text or symbols not renderable in plain ASCII are indicated by [...]. Abstract is included in ...
We present new tools from probability theory that can be applied to the analysis of learning algorit...