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Discrete-Time Temporal Reasoning with Horn DLRs

机译:Horn DLR的离散时间时间推理

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摘要

Temporal reasoning problems arise in many areas of AI, including planning, natural language understanding, and reasoning about physical systems. The computational complexity of continuous-time temporal constraint reasoning is fairly well understood. There are, however, many different cases where discrete time must be considered; various scheduling problems and reasoning about sampled physical systems are two examples. Here, the complexity of temporal reasoning is not as well-studied nor as well-understood. In order to get a better understanding, we consider the powerful Horn DLR formalism adapted for discrete time and study its computational complexity. We show that the full formalism is NP-hard and identify several maximal tractable subclasses. We also 'lift' the maximality results to obtain hardness results for other families of constraints. Finally, we discuss how the results and techniques presented in this paper can be used for studying even more expressive classes of temporal constraints.
机译:时间推理问题出现在AI的许多领域,包括计划,自然语言理解和有关物理系统的推理。连续时间时间约束推理的计算复杂度已被很好地理解。但是,在许多不同的情况下,必须考虑离散时间。各种调度问题和有关采样物理系统的推理就是两个示例。在这里,时间推理的复杂性没有得到很好的研究,也没有得到很好的理解。为了更好地理解,我们考虑了适用于离散时间的强大的Horn DLR形式主义,并研究了其计算复杂性。我们表明,完整的形式主义是NP难的,并确定了几个最大的易处理子类。我们还“提升”最大值结果以获得其他约束条件系列的硬度结果。最后,我们讨论了本文中介绍的结果和技术如何用于研究更具表现力的时间约束类。

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