可变移位SDD:一个更简洁的句子决策图

Kengo Nakamura, Shuhei Denzumi, Masaaki Nishino
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引用次数: 6

摘要

句子决策图(SDD)是布尔函数的一种易于处理的表示,它将著名的有序二进制决策图(OBDD)作为严格子集。由于sdo比obdd更简洁,并且具有规范化的形式,并支持许多有用的查询和转换(如模型计数和Apply操作),因此备受关注。在本文中,我们提出了一种更简洁的SDD变体,称为可变移位SDD (VS-SDD)。关键思想是为在特定变量替换下等效的布尔函数创建唯一表示。我们表明,VS-SDD的大小永远不会大于SDD,并且在某些情况下,VS-SDD的大小会以指数方式小于SDD的大小。此外,尽管如此简洁,我们证明了在使用SDD的polytime中支持的许多基本操作在使用VS-SDD的polytime中也支持。实验证实,当应用于固有对称性存在的经典规划实例时,VS-SDDs明显比SDDs更简洁。
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Variable Shift SDD: A More Succinct Sentential Decision Diagram
The Sentential Decision Diagram (SDD) is a tractable representation of Boolean functions that subsumes the famous Ordered Binary Decision Diagram (OBDD) as a strict subset. SDDs are attracting much attention because they are more succinct than OBDDs, as well as having canonical forms and supporting many useful queries and transformations such as model counting and Apply operation. In this paper, we propose a more succinct variant of SDD named Variable Shift SDD (VS-SDD). The key idea is to create a unique representation for Boolean functions that are equivalent under a specific variable substitution. We show that VS-SDDs are never larger than SDDs and there are cases in which the size of a VS-SDD is exponentially smaller than that of an SDD. Moreover, despite such succinctness, we show that numerous basic operations that are supported in polytime with SDD are also supported in polytime with VS-SDD. Experiments confirm that VS-SDDs are significantly more succinct than SDDs when applied to classical planning instances, where inherent symmetry exists.
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