从数据库查询中检索信息

Vladimir Soares Catão, M. Sampaio, U. Schiel
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引用次数: 0

摘要

数据库和文档通常被限制在组织内部分离的环境中,分别由数据库管理系统(DBMS)和信息检索系统(IRS)控制。然而,DBMS和IRS经常存储关于相同实体的数据,以这种方式为集成提供了机会。我们提出了一个用于DBMS-IRS集成的框架,该框架使用数据库查询结果中排名最高的术语作为IRS搜索的关键字,从而检索与查询强烈相关的文档。实际上,该框架使用排名的术语来“扩展”用户提供的初始关键字搜索。此外,我们的术语排序方法利用查询提供所需信息的精确答案这一事实,通过查询结果中的分散度来度量术语的效用。我们的实验证明了该方法在DBMS-IRS集成方面的优越性,以及我们的术语排序方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information Retrieval from database queries
Databases and documents are usually confined into separated environments inside organizations, controlled by Database Management Systems (DBMS) and Information Retrieval Systems (IRS), respectively. However, both DBMS and IRS frequently store data about the same entities, in this way presenting opportunities for integration. We propose a framework for DBMS-IRS integration that uses top ranked terms from a database query result as keywords for an IRS search, thus retrieving documents strongly related to the query. Indeed, the framework uses the ranked terms to “expand” an initial keyword search provided by the user. Moreover, our term ranking method measures the utility of a term through its dispersion along a query result, exploiting the fact that the query provides exact answers to the information need. Our experiments have confirmed the superiority of the approach to DBMS-IRS integration, as well as the effectiveness of our term ranking method.
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