首页 /研究 /Policy-Gradient Algorithms for Partially Observable Markov Decision Processes
LEARNING

Policy-Gradient Algorithms for Partially Observable Markov Decision Processes

Douglas Aberdeen

发表年份
2003
引用次数
75
访问权限
开放获取

摘要

Partially observable Markov decision processes are interesting because of their ability to model most conceivable real-world learning problems, for example, robot navigation, driving a car, speech recognition, stock trading, and playing games. The downside of this generality is that exact algorithms are computationally intractable. Such computational complexity motivates approximate approaches. One such class of algorithms are the so-called policy-gradient methods from reinforcement learning. They seek to adjust the parameters of an agent in the direction that maximises the long-term average of a reward signal. Policy-gradient methods are attractive as a \emph{scalable} approach for controlling partially observable Markov decision processes (POMDPs). In the most general case POMDP policies require some form of internal state, or memory, in order to act optimally. Policy-gradient methods have shown promise for problems admitting memory-less policies but have been less successful when memory is required. This thesis develops several improved algorithms for learning policies with memory in an infinite-horizon setting. Directly, when the dynamics of the world are known, and via Monte-Carlo methods otherwise. The algorithms simultaneously learn how to act and what to remember.

关键词

Markov decision processReinforcement learningComputer sciencePartially observable Markov decision processEstimatorAlgorithmMathematical optimizationVariance (accounting)Artificial intelligenceMarkov process

相关论文

查看 LEARNING 分类全部论文