International audienceThis chapter surveys recent lines of work that use Bayesian techniques for reinforcement learning. In Bayesian learning, uncertainty is expressed by a prior distribution over unknown parameters and learning is achieved by computing a posterior distribution based on the data observed. Hence, Bayesian reinforcement learning distinguishes itself from other forms of reinforcement learning by explicitly maintaining a distribution over various quantities such as the parameters of the model, the value function, the policy or its gradient. This yields several benefits: a) domain knowledge can be naturally encoded in the prior distribution to speed up learning; b) the exploration/exploitation tradeoff can be naturally optimized...
This paper introduces a set of algorithms for Monte-Carlo Bayesian reinforcement learning. Firstly, ...
Making intelligent decisions from incomplete information is critical in many applications: for examp...
My research attempts to address on-line action selection in reinforcement learning from a Bayesian p...
International audienceThis chapter surveys recent lines of work that use Bayesian techniques for rei...
Effectively leveraging model structure in reinforcement learning is a difficult task, but failure to...
Artificial Intelligence (AI) has been an active field of research for over a century now. The resear...
This thesis explores Bayesian and variational inference in the context of solving the reinforcement ...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
Reinforcement Learning has emerged as a useful framework for learning to perform a task optimally fr...
Graduation date: 2013How can an agent generalize its knowledge to new circumstances? To learn\ud ef...
We consider reinforcement learning in partially observable domains where the agent can query an expe...
Bayesian Reinforcement Learning (BRL) offers a decision-theoretic solution to the reinforcement lear...
The explore–exploit dilemma is one of the central challenges in Reinforcement Learn-ing (RL). Bayesi...
This thesis presents research contributions in the study field of Bayesian Reinforcement Learning — ...
We introduce a simple, general framework for likelihood-free Bayesian reinforcement learning, throug...
This paper introduces a set of algorithms for Monte-Carlo Bayesian reinforcement learning. Firstly, ...
Making intelligent decisions from incomplete information is critical in many applications: for examp...
My research attempts to address on-line action selection in reinforcement learning from a Bayesian p...
International audienceThis chapter surveys recent lines of work that use Bayesian techniques for rei...
Effectively leveraging model structure in reinforcement learning is a difficult task, but failure to...
Artificial Intelligence (AI) has been an active field of research for over a century now. The resear...
This thesis explores Bayesian and variational inference in the context of solving the reinforcement ...
The field of Reinforcement Learning is concerned with teaching agents to take optimal decisions t...
Reinforcement Learning has emerged as a useful framework for learning to perform a task optimally fr...
Graduation date: 2013How can an agent generalize its knowledge to new circumstances? To learn\ud ef...
We consider reinforcement learning in partially observable domains where the agent can query an expe...
Bayesian Reinforcement Learning (BRL) offers a decision-theoretic solution to the reinforcement lear...
The explore–exploit dilemma is one of the central challenges in Reinforcement Learn-ing (RL). Bayesi...
This thesis presents research contributions in the study field of Bayesian Reinforcement Learning — ...
We introduce a simple, general framework for likelihood-free Bayesian reinforcement learning, throug...
This paper introduces a set of algorithms for Monte-Carlo Bayesian reinforcement learning. Firstly, ...
Making intelligent decisions from incomplete information is critical in many applications: for examp...
My research attempts to address on-line action selection in reinforcement learning from a Bayesian p...