基于自索引Top-k文档检索的近似文档频次

Tokinori Suzuki, Atsushi Fujii
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引用次数: 1

摘要

Top-k文档检索是许多应用程序的基本任务,它返回与查询高度相关的文档。其中一个很有前途的索引框架是利用fm索引和小波树来支持高效的top-k文档检索。但是,索引在搜索时难以处理文档频率(DF),因为索引的词都是文档集合的子字符串。以前的工作是详尽地搜索索引的所有部分,其中大多数文档是不相关的,用于DF计算或将重新计算的DF值存储在巨大的额外空间中。在本文中,我们提出了两种方法,利用从遍历索引结构中获得的信息来近似查询项的DF。实验结果表明,在保持搜索效率的同时,我们的方法几乎达到了穷举搜索的同等效果,而我们的方法的搜索时间大约是穷举搜索的一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximating Document Frequency for Self-Index based Top-k Document Retrieval
Top-k document retrieval, which returns highly relevant documents relative to a query, is an essential task for many applications. One of the promising index frameworks is built by FM-index and wavelet tree for supporting efficient top-k document retrieval. The index, however, has difficulty on handling document frequency (DF) at search time because indexed terms are all substrings of a document collection. Previous works exhaustively search all the parts of the index, where most of the documents are not relevant, for DF calculation or store recalculated DF values in huge additional space. In this paper, we propose two methods to approximate DF of a query term by exploiting the information obtained from the process of traversing the index structures. Experimental results showed that our methods achieved almost equal effectiveness of exhaustive search while keeping search efficiency that time of our methods are about a half of the exhaustive search.
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