用PVS验证半结构化数据规范化

S. Lee, Jing Sun, G. Dobbie, L. Groves
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引用次数: 2

摘要

半结构化数据的急剧增长导致了用于操纵数据的数据库系统的发展。尽管其潜力巨大,但在设计好的半结构化数据库时,仍然缺乏形式化和验证支持。与传统数据库系统一样,开发的半结构化数据库系统应尽可能减少冗余和更新异常,以便有效地存储和管理数据。为了满足这些需求,人们提出了几种规范化算法,将半结构化数据的模式转换为更好的形式。必须确保规范化模式在语义上与其原始形式保持等价。在本文中,我们提供了对半结构化数据规范化正确性推理的工具支持。所提出的方法使用ORA-SS数据建模表示法,并用PVS形式语言定义其正确性标准和规则。它进一步利用PVS定理证明器对规范化模式执行自动检查,检查是否保留了功能依赖关系、没有丢失数据和没有创建虚假数据。总之,我们的方法不仅研究了半结构化数据规范化的特征,而且还为半结构化数据规范化算法的正确性推理提供了可扩展和自动化的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verifying Semistructured Data Normalization Using PVS
The dramatic expansion of semistructured data has led to the development of database systems for manipulating the data. Despite its huge potential, there is still a lack of formality and verification support in the design of good semistructured databases. Like traditional database systems, developed semistructured database systems should contain minimal redundancies and update anomalies, in order to store and manage the data effectively. Several normalization algorithms have been proposed to satisfy these needs, by transforming the schema of the semistructured data into a better form. It is essential to ensure that the normalized schema remains semantically equivalent to its original form. In this paper, we present tool support for reasoning about the correctness of semistructured data normalization. The proposed approach uses the ORA-SS data modeling notation and defines its correctness criteria and rules in the PVS formal language. It further utilizes the PVS theorem prover to perform automated checking on the normalized schema, checking that functional dependencies are preserved, no data is lost and no spurious data is created. In summary, our approach not only investigates the characteristics of semistructured data normalization, but also provides a scalable and automated first step towards reasoning about the correctness of normalization algorithms on semistructured data.
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