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Maintaining consistency of vague databases using data dependencies

机译:使用数据依赖关系保持模糊数据库的一致性

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摘要

Vague information is common in many database applications due to intensive data dissemination arising from different pervasive computing sources, such as the high volume data obtained from sensor networks and mobile communications. In this paper, we utilize functional dependencies (FDs) and inclusion dependencies (INDs), which are the most fundamental integrity constraints that arise in practice in relational databases, to maintain the consistency of a vague database. First, we tackle the problem, given a vague relation r and a set of FDs F, of how to obtain the "best" approximation of r with respect to F when taking into account the median membership (m) and the imprecision membership (i) thresholds. Using these two thresholds of a vague set, we define the notion of mi-overlap between vague sets and a merge operation on r. Second, we consider, given a vague database d and a set of INDs N, how to obtain the minimal possible change in value-precision for d. Satisfaction of an FD in r is defined in terms of values being mi-overlapping while satisfaction of an IND in d is defined in terms of value-precision. We show that Lien's and Atz-eni's axiom system is sound and complete for FDs being satisfied in vague relations and that Casanova et al.'s axiom system is sound and complete for INDs being satisfied in vague databases. Finally, we study the chase procedure VChase(d, F u N) as a means to maintain consistency of d with respect to F and N. Our main result is that the output of the procedure is the most object-precise approximation of r with respect to F and the minimum value-precision change of d with respect to N. The complexity of VChase(r,F) is polynomial time in the sizes of r and F whereas the complexity of VChase(d,F∪N) is exponential.
机译:由于不同的普适计算源(例如从传感器网络和移动通信获得的大量数据)引起的大量数据分发,模糊信息在许多数据库应用程序中很常见。在本文中,我们利用功能依赖关系(FD)和包含依赖关系(IND)(它们是关系数据库中实践中出现的最基本的完整性约束)来维护模糊数据库的一致性。首先,考虑到关系r和一组FD F,我们解决了一个问题,即在考虑中位数隶属度(m)和不精确隶属度(i)时,如何获得r相对于F的“最佳”近似值。 )阈值。使用模糊集的这两个阈值,我们定义了模糊集与r上的合并操作之间的mi重叠的概念。其次,我们考虑给定一个模糊的数据库d和一组INDs N,如何获得d的值精度的最小可能变化。 r中FD的满意度是根据mi重叠的值定义的,而d中IND的满意度是根据值精度的定义的。我们表明,对于模糊关系中的FD满足,Lien和Atz-eni的公理系统是健全和完整的,对于模糊数据库中的IND,Casanova等人的公理系统是健全且完整的。最后,我们研究追赶程序VChase(d,F u N)作为保持d关于F和N的一致性的一种方法。我们的主要结果是,该程序的输出是r的最精确对象逼近VChase(r,F)的复杂度是r和F大小的多项式时间,而VChase(d,F∪N)的复杂度是指数的。

著录项

  • 来源
    《Data & Knowledge Engineering》 |2009年第7期|622-641|共20页
  • 作者

    An Lu; Wilfred Ng;

  • 作者单位

    Department of Computer Science and Engineering, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, China;

    Department of Computer Science and Engineering, The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon, Hong Kong, China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    data models; chase; data dependencies; data consistency; uncertainty;

    机译:数据模型;追;数据依赖性数据一致性;不确定;

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