Semi-Markov Decision Problems are continuous time generalizations of discrete time Markov Decision Problems. A number of reinforcement learning algorithms have been developed recently for the solution of Markov Decision Problems, based on the ideas of asynchronous dynamic programming and stochastic approximation. Among these are TD(), Q-learning, and Real-time Dynamic Programming. After reviewing semi-Markov Decision Problems and Bellman's optimality equation in that context, we propose algorithms similar to those named above, adapted to the solution of semi-Markov Decision Problems. We demonstrate these algorithms by applying them to the problem of determining the optimal control for a simple queueing system. We conclude with a discus...
We introduce a class of MPDs which greatly simplify Reinforcement Learning. They have discrete state...
Solving a semi-Markov decision process (SMDP) using value or policy iteration requires precise knowl...
The two-part series of papers provides a survey on recent advances in Deep Reinforcement Learning (D...
A large class of problems of sequential decision making under uncertainty, of which the underlying p...
Increasing attention has been paid to reinforcement learning algorithms in recent years, partly due ...
We introduce a class of Markov decision problems (MDPs) which greatly simplify Reinforcement Learnin...
In the last few years, Reinforcement Learning (RL), also called adaptive (or approximate) dynamic pr...
In this paper, we present a brief survey of reinforcement learning, with particular emphasis on stoc...
and Reinforcement Learning are two frameworks suited for robot control but focusing on different asp...
Abstract £ We provide some general results on the convergence of a class of stochastic approximation...
The paper investigates the possibility of applying value function based reinforcement learn-ing (RL)...
We address the problem of computing the optimal Q-function in Markov decision prob-lems with infinit...
The first part of a two-part series of papers provides a survey on recent advances in Deep Reinforce...
This thesis deals with the solving of learning control problems whose optimal solutions are non stat...
Recent developments in the area of reinforcement learning have yielded a number of new algorithms fo...
We introduce a class of MPDs which greatly simplify Reinforcement Learning. They have discrete state...
Solving a semi-Markov decision process (SMDP) using value or policy iteration requires precise knowl...
The two-part series of papers provides a survey on recent advances in Deep Reinforcement Learning (D...
A large class of problems of sequential decision making under uncertainty, of which the underlying p...
Increasing attention has been paid to reinforcement learning algorithms in recent years, partly due ...
We introduce a class of Markov decision problems (MDPs) which greatly simplify Reinforcement Learnin...
In the last few years, Reinforcement Learning (RL), also called adaptive (or approximate) dynamic pr...
In this paper, we present a brief survey of reinforcement learning, with particular emphasis on stoc...
and Reinforcement Learning are two frameworks suited for robot control but focusing on different asp...
Abstract £ We provide some general results on the convergence of a class of stochastic approximation...
The paper investigates the possibility of applying value function based reinforcement learn-ing (RL)...
We address the problem of computing the optimal Q-function in Markov decision prob-lems with infinit...
The first part of a two-part series of papers provides a survey on recent advances in Deep Reinforce...
This thesis deals with the solving of learning control problems whose optimal solutions are non stat...
Recent developments in the area of reinforcement learning have yielded a number of new algorithms fo...
We introduce a class of MPDs which greatly simplify Reinforcement Learning. They have discrete state...
Solving a semi-Markov decision process (SMDP) using value or policy iteration requires precise knowl...
The two-part series of papers provides a survey on recent advances in Deep Reinforcement Learning (D...