图的函数依赖

W. Fan, Yinghui Wu, Jingbo Xu
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引用次数: 101

摘要

我们提出了一类图的函数依赖,称为gfd。GFDs捕获实体的属性值依赖关系和拓扑结构,并将条件功能依赖关系(cfd)作为特殊情况纳入其中。我们证明了GFDs的可满足性和蕴涵性问题分别是conp完备和np完备的,并不比CFD的同类问题差。我们还证明了GFDs的验证问题是conp完备的。尽管困难,我们开发了并行可扩展算法来捕捉大规模图中gfd的违反。利用现实生活和合成数据,我们实验验证了GFDs提供了一种有效的方法来检测知识和社会图中的不一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional Dependencies for Graphs
We propose a class of functional dependencies for graphs, referred to as GFDs. GFDs capture both attribute-value dependencies and topological structures of entities, and subsume conditional functional dependencies (CFDs) as a special case. We show that the satisfiability and implication problems for GFDs are coNP-complete and NP-complete, respectively, no worse than their CFD counterparts. We also show that the validation problem for GFDs is coNP-complete. Despite the intractability, we develop parallel scalable algorithms for catching violations of GFDs in large-scale graphs. Using real-life and synthetic data, we experimentally verify that GFDs provide an effective approach to detecting inconsistencies in knowledge and social graphs.
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