International audienceMany popular reinforcement learning problems (e.g., navigation in a maze, some Atari games, mountain car) are instances of the episodic setting under its stochastic shortest path (SSP) formulation, where an agent has to achieve a goal state while minimizing the cumulative cost. Despite the popularity of this setting, the explorationexploitation dilemma has been sparsely studied in general SSP problems, with most of the theoretical literature focusing on different problems (i.e., finite-horizon and infinite-horizon) or making the restrictive loop-free SSP assumption (i.e., no state can be visited twice during an episode). In this paper, we study the general SSP problem with no assumption on its dynamics (some policies m...
We revisit the incremental autonomous exploration problem proposed by Lim & Auer (2012). In this set...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...
International audienceMany popular reinforcement learning problems (e.g., navigation in a maze, some...
International audienceWe study the problem of learning in the stochastic shortest path (SSP) setting...
International audienceWe consider the reward-free exploration framework introduced by Jin et al. (20...
Goal-oriented Reinforcement Learning, where the agent needs to reach the goal state while simultaneo...
We consider a class of sequential decision making problems in the presence of uncertainty, which bel...
We consider an agent interacting with an environment in a single stream of actions, observations, an...
Exploration-exploitation trade-off is a fundamental dilemma that reinforcement learning algorithms f...
Existing episodic reinforcement algorithms assume that the length of an episode is fixed across tim...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
International audienceWe consider the exploration-exploitation dilemma in finite-horizon reinforceme...
This paper presents a model allowing to tune continual exploration in an optimal way by integrating ...
We consider an agent interacting with an en-vironment in a single stream of actions, ob-servations, ...
We revisit the incremental autonomous exploration problem proposed by Lim & Auer (2012). In this set...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...
International audienceMany popular reinforcement learning problems (e.g., navigation in a maze, some...
International audienceWe study the problem of learning in the stochastic shortest path (SSP) setting...
International audienceWe consider the reward-free exploration framework introduced by Jin et al. (20...
Goal-oriented Reinforcement Learning, where the agent needs to reach the goal state while simultaneo...
We consider a class of sequential decision making problems in the presence of uncertainty, which bel...
We consider an agent interacting with an environment in a single stream of actions, observations, an...
Exploration-exploitation trade-off is a fundamental dilemma that reinforcement learning algorithms f...
Existing episodic reinforcement algorithms assume that the length of an episode is fixed across tim...
We introduce a class of learning problems where the agent is presented with a series of tasks. Intui...
International audienceWe consider the exploration-exploitation dilemma in finite-horizon reinforceme...
This paper presents a model allowing to tune continual exploration in an optimal way by integrating ...
We consider an agent interacting with an en-vironment in a single stream of actions, ob-servations, ...
We revisit the incremental autonomous exploration problem proposed by Lim & Auer (2012). In this set...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...
Most provably-efficient reinforcement learning algorithms introduce opti-mism about poorly-understoo...