MLR数据模型的语义和表达能力

Fang Chen, R. Sandhu
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引用次数: 26

摘要

我们定义了具有元素级标记的多层关系的多层关系数据模型。该模型建立在该领域众多作者的先前工作的基础上,并整合了来自许多来源的想法。将SeaView的思想、基于信念的语义和LDV模型相结合,提出了一种新的基于数据的语义的MLR数据模型,该模型具有消除歧义和保持向上信息流的优点。得到的模型简单、明确且功能强大。它有五个完整性属性和五个操作语句,用于操作多层关系。为了支持这种集成,我们引入了几个新概念,并重新定义了几个旧概念。本文还讨论了MLR模型的表达能力,并与其他几种模型进行了比较。我们还解决了将MLR模型转换为双层标记的一些问题,包括方案映射和操作解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The semantics and expressive power of the MLR data model
We define the multilevel relational (MLR) data model for multilevel relations with element-level labeling. This model builds upon prior work of numerous authors in this area, and integrates ideas from a number of sources. A new data-based semantics is given to the MLR data model which combines ideas from SeaView, belief-based semantics and LDV model, and has the advantages of both eliminating ambiguity and retaining upward information flow. The resulting model is simple, unambiguous and powerful. It has five integrity properties and five operation statements for manipulating multilevel relations. In order to support this integration, we introduce several new concepts as well as redefine several old ones. The expressive power of the MLR model is also discussed in this paper, and is compared with several other models. We also address some issues in converting the MLR model to tuple-level labeling, including both scheme mapping and operation interpretation.<>
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