Bayesian probabilities are an efficient tool for addressing machine learning issues. However, because such problems are often difficult, trade-offs between accuracy and efficiency must be implemented. Our work presents the Bayesian learning method, its philosophical foundations and several innovative applications. Firstly, we study two data analysis problem with hidden variables. We propose a method for ranking chess players and a collaborative filtering system for movie recommendations. The second part of our work deals with model learning, with the selection and the creation of relevant variables for a robotic application. Keywords : bayesian learning, subjective probabilities, generative models, ranking from pairwise comparisons, chess, ...
How can a machine learn from experience? Probabilistic modelling provides a framework for understand...
This document describes my research around Bayesian modeling and robotics. My work started with the ...
International audienceHow to use an incomplete and uncertain model of the environment to perceive, i...
Bayesian probabilities are an efficient tool for addressing machine learning issues. However, becaus...
Les probabilités bayésiennes sont un outil rationnel pour répondre à la problématique de l'apprentis...
In the domain of modeling sensorimotor systems, whether they are artificial or natural, we are inter...
This thesis explores the use of Bayesian models in multi-player video games AI, particularly real-ti...
This thesis presents research contributions in the study field of Bayesian Reinforcement Learning — ...
This thesis proposes an original method for robotic programming based on bayesian inference and lear...
We propose an original method for programming robots based on Bayesian inference and learning. This ...
Cette thèse explore l'utilisation des modèles bayésiens dans les IA de jeux vidéo multi-joueurs, par...
The two-armed bandit problem is a classical optimization problem where a player sequentially selects...
We treat the problem of behaviours for autonomous characters (bots) in virtual worlds, with the exam...
Automating machine learning by providing techniques that autonomously find the best algorithm, hyper...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
How can a machine learn from experience? Probabilistic modelling provides a framework for understand...
This document describes my research around Bayesian modeling and robotics. My work started with the ...
International audienceHow to use an incomplete and uncertain model of the environment to perceive, i...
Bayesian probabilities are an efficient tool for addressing machine learning issues. However, becaus...
Les probabilités bayésiennes sont un outil rationnel pour répondre à la problématique de l'apprentis...
In the domain of modeling sensorimotor systems, whether they are artificial or natural, we are inter...
This thesis explores the use of Bayesian models in multi-player video games AI, particularly real-ti...
This thesis presents research contributions in the study field of Bayesian Reinforcement Learning — ...
This thesis proposes an original method for robotic programming based on bayesian inference and lear...
We propose an original method for programming robots based on Bayesian inference and learning. This ...
Cette thèse explore l'utilisation des modèles bayésiens dans les IA de jeux vidéo multi-joueurs, par...
The two-armed bandit problem is a classical optimization problem where a player sequentially selects...
We treat the problem of behaviours for autonomous characters (bots) in virtual worlds, with the exam...
Automating machine learning by providing techniques that autonomously find the best algorithm, hyper...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
How can a machine learn from experience? Probabilistic modelling provides a framework for understand...
This document describes my research around Bayesian modeling and robotics. My work started with the ...
International audienceHow to use an incomplete and uncertain model of the environment to perceive, i...