An approach to intensional query answering at multiple abstraction levels using data mining approaches

E. Park, Suk-Chung Yoon
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引用次数: 12

Abstract

Introduces a partially automated method for generating intensional answers at multiple abstraction levels for a query, which can help database users find more interesting and desired answers. Our approach consists of three phases: pre-processing, query execution and answer generation. In the pre-processing phase, we build a set of concept hierarchies constructed by generalization of the data stored in a database and a set of virtual hierarchies to provide a global view of the relationships among high-level concepts from multiple concept hierarchies. In the query execution phase, we receive a user's query, process the query, collect an extensional answer and select a set of relevant attributes to be generalized in the extensional answer. In the answer generation phase, we find the general characteristics of those relevant attribute values at multiple abstraction levels with the concept hierarchies and the virtual hierarchies by using data mining methods. The main contribution of this paper is that we apply and extend data mining methods to generate intensional answers at multiple abstraction levels, which increases the relevance of the answers. In addition, we suggest strategies to avoid meaningless intensional answers, which substantially reduces the computational complexity of the intensional answer generation process.
一种使用数据挖掘方法在多个抽象层上进行内涵查询应答的方法
介绍了一种部分自动化的方法,用于在多个抽象级别为查询生成内涵答案,这可以帮助数据库用户找到更有趣和想要的答案。我们的方法包括三个阶段:预处理、查询执行和答案生成。在预处理阶段,我们构建了一组由数据库中存储的数据泛化构建的概念层次结构和一组虚拟层次结构,以提供来自多个概念层次结构的高级概念之间关系的全局视图。在查询执行阶段,我们接收用户的查询,处理查询,收集扩展答案,并选择一组相关属性在扩展答案中进行泛化。在答案生成阶段,利用数据挖掘方法,在概念层次和虚拟层次的多个抽象层次上发现相关属性值的一般特征。本文的主要贡献在于我们应用和扩展了数据挖掘方法来生成多个抽象层次的内涵答案,从而增加了答案的相关性。此外,我们提出了避免无意义内涵答案的策略,这大大降低了内涵答案生成过程的计算复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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