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Inconsistency Measurement based on Variables in Minimal Unsatisfiable Subsets

机译:基于最小不可选择的子集中的变量的不一致测量

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Measuring inconsistency degrees of knowledge bases (KBs) provides important context information for facilitating inconsistency handling. Several semantic and syntax based measures have been proposed separately. In this paper, we propose a new way to define inconsistency measurements by combining semantic and syntax based approaches. It is based on counting the variables of minimal unsatisfiable subsets (MUSes) and minimal correction subsets (MCSes), which leads to two equivalent inconsistency degrees, named ID_(MUS) and ID_(MCS). We give the theoretical and experimental comparisons between them and two purely semantic-based inconsistency degrees: 4-valued and the Quasi Classical semantics based inconsistency degrees. Moreover, the computational complexities related to our new inconsistency measurements are studied. As it turns out that computing the exact inconsistency degrees is intractable in general, we then propose and evaluate an anytime algorithm to make ID_(MUS) and ID_(MCS) usable in knowledge management applications. In particular, as most of syntax based measures tend to be difficult to compute in reality due to the exponential number of MUSes, our new inconsistency measures are practical because the numbers of variables in MUSes are often limited or easily to be approximated. We evaluate our approach on the DC benchmark. Our encouraging experimental results show that these new inconsistency measurements or their approximations are efficient to handle large knowledge bases and to better distinguish inconsistent knowledge bases.
机译:测量不一致知识库(KBS)提供了用于促进不一致处理的重要背景信息。已经单独提出了几种基于语义和语法的措施。在本文中,我们提出了一种通过组合基于语义和语法的方法来定义不一致测量的新方法。它基于计数最小不可采购的子集(MACES)和最小校正子集(MCSE)的变量,这导致了两个等效的不一致度,名为ID_(MU)和ID_(MCS)。我们提供了它们与两个纯粹语义的不一致度之间的理论和实验比较:4值和基于准古典语义的基于不一致度。此外,研究了与我们新的不一致测量相关的计算复杂性。事实证明,计算精确不一致度的计算通常是难以相容的,然后我们建议并评估任何时间算法,以使ID_(MU)和ID_(MCS)在知识管理应用程序中使用。特别是,由于大多数基于语法的措施由于衡量的常量数量而难以计算,我们的新不一致措施是实际的,因为缪斯中的变量数量通常是有限的或容易近似的。我们在DC基准上评估了我们的方法。我们令人鼓舞的实验结果表明,这些新的不一致测量或其近似是处理大知识库的有效,并更好地区分不一致的知识库。

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