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Model and Objective Separation with Conditional Lower Bounds: Disjunction is Harder than Conjunction *

机译:模型和客观分离与条件下限:分离比结合更难*

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Given a model of a system and an objective, the model-checking question asks whether the model satisfies the objective. We study polynomial-time problems in two classical models, graphs and Markov Decision Processes (MDPs), with respect to several fundamental ω-regular objectives, e.g., Rabin and Streett objectives. For many of these problems the best-known upper bounds are quadratic or cubic, yet no super-linear lower bounds are known. In this work our contributions are two-fold: First, we present several improved algorithms, and second, we present the first conditional super-linear lower bounds based on widely believed assumptions about the complexity of CNF-SAT and combinatorial Boolean matrix multiplication. A separation result for two models with respect to an objective means a conditional lower bound for one model that is strictly higher than the existing upper bound for the other model, and similarly for two objectives with respect to a model. Our results establish the following separation results: (1) A separation of models (graphs and MDPs) for disjunctive queries of reachability and Büchi objectives. (2) Two kinds of separations of objectives, both for graphs and MDPs, namely, (2a) the separation of dual objectives such as Streett/Rabin objectives, and (2b) the separation of conjunction and disjunction of multiple objectives of the same type such as safety, Büchi, and coBüchi. In summary, our results establish the first model and objective separation results for graphs and MDPs for various classical ω-regular objectives. Quite strikingly, we establish conditional lower bounds for the disjunction of objectives that are strictly higher than the existing upper bounds for the conjunction of the same objectives.
机译:给定一个系统和一个客观的模型,该模型检查问题询问是否模型满足目标。我们两个经典模型,图表和马尔可夫决策过程(MDP中)到几个基本的ω-常规目标,例如,拉宾和Streett目标研究多项式时间问题,尊重。对于许多这些问题的最知名的上限是二次或三次,但没有超线性下界是已知的。在这项工作中我们的贡献有两方面:首先,我们介绍几种改进算法,和第二,我们提出的第一个条件超线性基于对CNF-SAT的复杂性和组合布尔矩阵乘法普遍认为假设下界。为两个模型相对于一个目标装置的有条件下界一个模型,该模型是严格比现有的上限为其他模型更高,同样地,对于两个目标相对于模型的分离结果。我们的研究结果建立以下分离的结果:(1)模型(图和MDP中)的可达性和步琪目标的转折查询的分离。 (2)两种目标分离的,既可用于图形和的MDP,即,(2a)的双重目标,例如Streett /拉宾目标的分离,和(2b)相结合及的相同类型的多个目标析取的分离如安全,步琪和coBüchi。总之,我们的结果建立图表和MDP中各种经典的ω-常规目标的第一个模型,客观的分离效果。颇为引人注目的是,我们建立有条件的下限为是严格比相同目标的结合现有的上限更高目标的脱节。

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