Title of article :
Decision-theoretic planning with generalized first-order decision diagrams Original Research Article
Author/Authors :
Saket Joshi، نويسنده , , Kristian Kersting، نويسنده , , Roni Khardon، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
25
From page :
2198
To page :
2222
Abstract :
Many tasks in AI require representation and manipulation of complex functions. First-Order Decision Diagrams (FODD) are a compact knowledge representation expressing functions over relational structures. They represent numerical functions that, when constrained to the Boolean range, use only existential quantification. Previous work has developed a set of operations for composition and for removing redundancies in FODDs, thus keeping them compact, and showed how to successfully employ FODDs for solving large-scale stochastic planning problems through the formalism of relational Markov decision processes (RMDP). In this paper, we introduce several new ideas enhancing the applicability of FODDs. More specifically, we first introduce Generalized FODDs (GFODD) and composition operations for them, generalizing FODDs to arbitrary quantification. Second, we develop a novel approach for reducing (G)FODDs using model checking. This yields – for the first time – a reduction that maximally reduces the diagram for the FODD case and provides a sound reduction procedure for GFODDs. Finally we show how GFODDs can be used in principle to solve RMDPs with arbitrary quantification, and develop a complete solution for the case where the reward function is specified using an arbitrary number of existential quantifiers followed by an arbitrary number of universal quantifiers.
Keywords :
Knowledge representation , First order logic , Model checking , Dynamic programming , Automated reasoning , Markov decision process , Decision theoretic planning
Journal title :
Artificial Intelligence
Serial Year :
2011
Journal title :
Artificial Intelligence
Record number :
1207886
Link To Document :
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