Much recent work in reinforcement learning and stochastic optimal control has focused on algorithms that search directly through a space of policies rather than building approximate value functions. Policy search has numerous advantages: it does not rely on the Markov assumption, domain knowledge may be encoded in a policy, the policy may require less representational power than a value-function approximation, and stable and convergent algorithms are well-understood. In contrast with value-function methods, however, existing approaches to policy search have heretofore focused entirely on parametric approaches. This places fundamental limits on the kind of policies that can be represented. In this work, we show how policy search (with or wit...
Approximate dynamic programming approaches to the reinforcement learning problem are often categoriz...
We introduce a learning method called "gradient-based reinforcement planning" (GR...
It is known that existing policy gradient methods (such as vanilla policy gradient, PPO, A2C) may su...
International audienceLocal Policy Search is a popular reinforcement learning approach for handling ...
Gradient-based policy search is an alternative to value-function-based methods for reinforcement lea...
A policy gradient method is a reinforcement learning approach that directly optimizes a parametrized...
peer reviewedWe propose novel policy search algorithms in the context of off-policy, batch mode rein...
Learning complex control policies from non-linear and redundant sensory input is an important challe...
We introduce and empirically evaluate two novel online gradient-based reinforcement learning algorit...
Policy search is a successful approach to reinforcement learning. However, policy improvements often...
Abstract — We propose novel policy search algorithms in the context of off-policy, batch mode reinfo...
Conventional reinforcement learning algorithms for direct policy search are limited to finding only ...
Policy search is a successful approach to reinforcement learning. However, policy improvements often...
We consider the policy search approach to reinforcement learning. We show that if a “baseline distri...
International audiencePolicy search is a method for approximately solving an optimal control problem...
Approximate dynamic programming approaches to the reinforcement learning problem are often categoriz...
We introduce a learning method called "gradient-based reinforcement planning" (GR...
It is known that existing policy gradient methods (such as vanilla policy gradient, PPO, A2C) may su...
International audienceLocal Policy Search is a popular reinforcement learning approach for handling ...
Gradient-based policy search is an alternative to value-function-based methods for reinforcement lea...
A policy gradient method is a reinforcement learning approach that directly optimizes a parametrized...
peer reviewedWe propose novel policy search algorithms in the context of off-policy, batch mode rein...
Learning complex control policies from non-linear and redundant sensory input is an important challe...
We introduce and empirically evaluate two novel online gradient-based reinforcement learning algorit...
Policy search is a successful approach to reinforcement learning. However, policy improvements often...
Abstract — We propose novel policy search algorithms in the context of off-policy, batch mode reinfo...
Conventional reinforcement learning algorithms for direct policy search are limited to finding only ...
Policy search is a successful approach to reinforcement learning. However, policy improvements often...
We consider the policy search approach to reinforcement learning. We show that if a “baseline distri...
International audiencePolicy search is a method for approximately solving an optimal control problem...
Approximate dynamic programming approaches to the reinforcement learning problem are often categoriz...
We introduce a learning method called "gradient-based reinforcement planning" (GR...
It is known that existing policy gradient methods (such as vanilla policy gradient, PPO, A2C) may su...