Descriptive Complexity for counting complexity classes

M. Arenas, Martin Muñoz, Cristian Riveros
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引用次数: 19

Abstract

Descriptive Complexity has been very successful in characterizing complexity classes of decision problems in terms of the properties definable in some logics. However, descriptive complexity for counting complexity classes, such as FP and #P, has not been systematically studied, and it is not as developed as its decision counterpart. In this paper, we propose a framework based on Weighted Logics to address this issue. Specifically, by focusing on the natural numbers we obtain a logic called Quantitative Second Order Logics (QSO), and show how some of its fragments can be used to capture fundamental counting complexity classes such as FP, #P and FPSPACE, among others. We also use QSO to define a hierarchy inside #P, identifying counting complexity classes with good closure and approximation properties, and which admit natural complete problems. Finally, we add recursion to QSO, and show how this extension naturally captures lower counting complexity classes such as #L.
描述复杂度用于计算复杂度类
描述复杂性在描述决策问题的复杂性类方面已经非常成功,它是根据某些逻辑中可定义的属性来描述的。然而,用于计算复杂性类的描述性复杂性,如FP和#P,还没有被系统地研究过,也没有像决策类那样发达。本文提出了一个基于加权逻辑的框架来解决这个问题。具体来说,通过关注自然数,我们获得了一种称为定量二阶逻辑(QSO)的逻辑,并展示了如何使用它的一些片段来捕获基本计数复杂性类,如FP, #P和FPSPACE等。我们还使用QSO来定义#P内部的层次结构,识别具有良好闭包和近似属性的计数复杂性类,并且承认自然完全问题。最后,我们将递归添加到QSO中,并展示该扩展如何自然地捕获计数复杂度较低的类,如#L。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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