Efficient Planning in Large POMDPs through Policy Graph Based Factorized Approximations (2010)
AUTHORS:
Pajarinen Joni
,
Peltonen Jaakko
,
Hottinen Ari,
Uusitalo Mikko
URL:
http://dx.doi.org/10.1007/978-3-642-15939-8_1
PDF:
pdf/pajarinen10_ecml.pdf
@conference{ pajarinen10, editor = "Balc\'azar, J. and Bonchi, F. and Gionis, A. and Sebag, M.", author = "Pajarinen, Joni and Peltonen, Jaakko and Hottinen, Ari and Uusitalo, Mikko", publisher = "Springer Berlin / Heidelberg", responsibleauthor = "Pajarinen, Joni", title = "{Efficient Planning in Large POMDPs through Policy Graph Based Factorized Approximations}", url = "http://dx.doi.org/10.1007/978-3-642-15939-8_1", series = "Lecture Notes in Computer Science", booktitle = "European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases", corerank = "A", unitcode = "T3060=99,U9014=1", abstract = {Partially observable Markov decision processes (POMDPs) are widely used for planning under uncertainty. In many applications, the huge size of the POMDP state space makes straightforward optimization of plans (policies) computationally intractable. To solve this, we introduce an efficient POMDP planning algorithm. Many current methods store the policy partly through a set of "value vectors" which is updated at each iteration by planning one step further; the size of such vectors follows the size of the state space, making computation intractable for large POMDPs. We store the policy as a graph only, which allows tractable approximations in each policy update step: for a state space described by several variables, we approximate beliefs over future states with factorized forms, minimizing Kullback-Leibler divergence to the non-factorized distributions. Our other speedup approximations include bounding potential rewards. We demonstrate the advantage of our method in several reinforcement learning problems, compared to four previous methods.}, volume = "6323", flags = "AIRC HIIT public", year = "2010", pdf = "pajarinen10_ecml.pdf", impactfactor = "A4", pages = "1-16" }