International audienceThis paper presents a new approach for learning transition function in state representation learning (SRL) for control. While state-of-the-art methods use different deterministic neural networks to learn forward and inverse state transition functions independently with auto-supervised learning, we introduce a bidirectional stochastic model to learn both transition functions. We aim at using the uncertainty of the model on its predictions as an intrinsic motivation for exploration to enhance the representation learning. More, using the same model to learn both transition functions allows sharing the parameters, which can reduce their number and should increase the embedding quality of the representation. We use a factor...
Finding reduced models of spatially distributed chemical reaction networks requires an estimation of...
This project will consist on the theoretical and experimental analysis of Restricted Boltzmann Machi...
The objective of this research is to realise structural learning within a Boltzmann machine (BM), wh...
This paper introduces a new learning algorithm for human activity recognition capable of simultaneou...
Existing reinforcement learning approaches are often hampered by learning tabula rasa. Transfer for ...
Existing reinforcement learning approaches are often hampered by learning tabula rasa. Transfer for ...
Abstract. Existing reinforcement learning approaches are often ham-pered by learning tabula rasa. Tr...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
The restricted Boltzmann machine (RBM), an important tool used in machine learning in particular for...
Reinforcement Learning (RL) is a popular method in machine learning. In RL, an agent learns a policy...
The dynamic Boltzmann machine (DyBM) has been proposed as a stochastic generative model of multi-dim...
Energy-based models are popular in machine learning due to the elegance of their formulation and the...
Many physical systems are described by probability distributions that evolve in both time and space....
International audienceThis review deals with Restricted Boltzmann Machine (RBM) under the light of s...
Abstract. Restricted Boltzmann Machines (RBM) are energy-based models that are successfully used as ...
Finding reduced models of spatially distributed chemical reaction networks requires an estimation of...
This project will consist on the theoretical and experimental analysis of Restricted Boltzmann Machi...
The objective of this research is to realise structural learning within a Boltzmann machine (BM), wh...
This paper introduces a new learning algorithm for human activity recognition capable of simultaneou...
Existing reinforcement learning approaches are often hampered by learning tabula rasa. Transfer for ...
Existing reinforcement learning approaches are often hampered by learning tabula rasa. Transfer for ...
Abstract. Existing reinforcement learning approaches are often ham-pered by learning tabula rasa. Tr...
Boltzmann learning underlies an artificial neural network model known as the Boltzmann machine that ...
The restricted Boltzmann machine (RBM), an important tool used in machine learning in particular for...
Reinforcement Learning (RL) is a popular method in machine learning. In RL, an agent learns a policy...
The dynamic Boltzmann machine (DyBM) has been proposed as a stochastic generative model of multi-dim...
Energy-based models are popular in machine learning due to the elegance of their formulation and the...
Many physical systems are described by probability distributions that evolve in both time and space....
International audienceThis review deals with Restricted Boltzmann Machine (RBM) under the light of s...
Abstract. Restricted Boltzmann Machines (RBM) are energy-based models that are successfully used as ...
Finding reduced models of spatially distributed chemical reaction networks requires an estimation of...
This project will consist on the theoretical and experimental analysis of Restricted Boltzmann Machi...
The objective of this research is to realise structural learning within a Boltzmann machine (BM), wh...