基于局部信息主题建模的基于agent的信息检索文档扩展

Oliver Strauß, Damian Kutzias, H. Kett
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引用次数: 1

摘要

随着数据生态系统的出现,在分布式和联合目录和市场中查找信息变得越来越重要。数据搜索和一般搜索中的一个问题是用户术语和搜索项之间的不匹配,无论是数据集元数据还是网页。提出了一种基于agent的文档扩展方法。其思想是用代理来表示文档,代理利用从用户搜索中收集的本地信息和相关信号来改进文档在搜索索引中的表示,从而提高系统的搜索性能。代理从相关查询中收集术语,对这些术语执行主题建模,并将随主题术语展开的不同变体发布到搜索索引中。我们发现该方法在搜索性能上取得了很好的提高,并且由于它不增加信息检索管道的负担,并且是其他文档扩展和信息检索方法的补充,是一种有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agent-Based Document Expansion for Information Retrieval Based on Topic Modeling of Local Information
With the advent of data ecosystems finding information in distributed and federated catalogs and marketplaces becomes more and more important. One of the problems in data search and search in general is the mismatch between the terminology of users and of the searched items, be it dataset metadata or web pages. The paper proposes an agent-based approach to document expansion (ADE). The idea is to represent documents with agents that exploit local information collected from user searches and relevant signals to improve the representation of the document in a search index and subsequently to improve the search performance of the system. The agents collect terms from relevant queries and perform topic modeling on these terms and publish different variants expanded with the topic terms to the search index. We find that the approach achieves good improvement in search performance and is a valuable tool because is places no burden on the information retrieval pipeline and is complementary to other document expansion and information retrieval approaches.
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