Title
Learning action effects in partially observable domains
Abstract
We investigate the problem of learning action effects in partially observable STRIPS planning domains. Our approach is based on a voted kernel perceptron learning model, where action and state information is encoded in a compact vector representation as input to the learning mechanism, and resulting state changes are produced as output. Our approach relies on deictic features that assume an attentional mechanism that reduces the size of the representation. We evaluate our approach on a number of partially observable planning domains, and show that it can quickly learn the dynamics of such domains, with low average error rates. We show that our approach handles noisy domains, conditional effects, and that it scales independently of the number of objects in a domain.
Year
DOI
Venue
2010
10.3233/978-1-60750-606-5-973
ECAI
Keywords
Field
DocType
observable domain,state information,action effect,deictic feature,compact vector representation,state change,observable strips planning domain,conditional effect,kernel perceptron,observable planning domain,attentional mechanism,error rate
Observable,Kernel perceptron,State information,Computer science,STRIPS,Artificial intelligence,Deixis,Machine learning
Conference
Volume
ISSN
Citations 
215
0922-6389
5
PageRank 
References 
Authors
0.43
12
3
Name
Order
Citations
PageRank
Kira Mourão1241.18
Ronald P. A. Petrick230924.24
Mark Steedman31795238.27