Solving Factored MDPs with Hybrid State and Action Variables (2006)
Cached
Download Links
- [www.cs.pitt.edu]
- [select.cs.cmu.edu]
- [www3.cs.pitt.edu]
- [www.select.cs.cmu.edu]
- [www.cs.pitt.edu]
- DBLP
Other Repositories/Bibliography
| Venue: | JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH |
| Citations: | 13 - 2 self |
BibTeX
@ARTICLE{Kveton06solvingfactored,
author = {Branislav Kveton and Milos Hauskrecht and Carlos Guestrin},
title = { Solving Factored MDPs with Hybrid State and Action Variables},
journal = {JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH},
year = {2006},
volume = {27},
pages = {153--201}
}
Years of Citing Articles
OpenURL
Abstract
Efficient representations and solutions for large decision problems with continuous and discrete variables are among the most important challenges faced by the designers of automated decision support systems. In this paper, we describe a novel hybrid factored Markov decision process (MDP) model that allows for a compact representation of these problems, and a new hybrid approximate linear programming (HALP) framework that permits their efficient solutions. The central idea of HALP is to approximate the optimal value function by a linear combination of basis functions and optimize its weights by linear programming.







