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Generalized First Order Decision Diagrams for First Order Markov Decision Processes

机译:一阶Markov决策过程的广义一阶决策图

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First order decision diagrams (FODD) were recently introduced as a compact knowledge representation expressing functions over relational structures. FODDs represent numerical functions that, when constrained to the Boolean range, use only existential quantification. Previous work developed a set of operations over FODDs, showed how they can be used to solve relational Markov decision processes (RMDP) using dynamic programming algorithms, and demonstrated their success in solving stochastic planning problems from the International Planning Competition in the system FODD-PIanner. A crucial ingredient of this scheme is a set of operations to remove redundancy in decision diagrams, thus keeping them compact. This paper makes three contributions. First, we introduce Generalized FODDs (GFODD) and combination algorithms for them, generalizing FODDs to arbitrary quantification. Second, we show how GFODDs can be used in principle to solve RMDPs with arbitrary quantification, and develop a particularly promising case where an arbitrary number of existential quantifiers is followed by an arbitrary number of universal quantifiers. Third, we develop a new approach to reduce FODDs and GFODDs using model checking. This yields a reduction that is complete for FODDs and provides a sound reduction procedure for GFODDs.
机译:一阶决策图(FODD)最近作为一种紧凑的知识表示法而引入,它表示关系结构上的功能。 FODD表示数值函数,当约束在布尔范围内时,仅使用存在量化。先前的工作开发了一套基于FODD的操作,展示了如何将它们用于使用动态编程算法来解决关系Markov决策过程(RMDP),并展示了它们在解决国际计划大赛中的随机规划问题方面的成功,该系统来自FODD-Panner 。该方案的关键要素是一组操作,以消除决策图中的冗余,从而使它们紧凑。本文做出了三点贡献。首先,我们介绍广义FODD(GFODD)及其组合算法,将FODD泛化为任意量化。其次,我们展示了GFODDs原则上可用于任意量化求解RMDP的方法,并提出了一种特别有希望的情况,即任意数量的存在量词后跟任意数量的通用量词。第三,我们开发了一种使用模型检查来减少FODD和GFODD的新方法。这产生了对于FODD完全的减少,并且为GFODD提供了声音减少的程序。

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