Query by document via a decomposition-based two-level retrieval approach

Linkai Weng, Zhiwei Li, Rui Cai, Yaoxue Zhang, Yuezhi Zhou, L. Yang, Lei Zhang
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引用次数: 30

Abstract

Retrieving similar documents from a large-scale text corpus according to a given document is a fundamental technique for many applications. However, most of existing indexing techniques have difficulties to address this problem due to special properties of a document query, e.g. high dimensionality, sparse representation and semantic concern. Towards addressing this problem, we propose a two-level retrieval solution based on a document decomposition idea. A document is decomposed to a compact vector and a few document specific keywords by a dimension reduction approach. The compact vector embodies the major semantics of a document, and the document specific keywords complement the discriminative power lost in dimension reduction process. We adopt locality sensitive hashing (LSH) to index the compact vectors, which guarantees to quickly find a set of related documents according to the vector of a query document. Then we re-rank documents in this set by their document specific keywords. In experiments, we obtained promising results on various datasets in terms of both accuracy and performance. We demonstrated that this solution is able to index large-scale corpus for efficient similarity-based document retrieval.
通过基于分解的两级检索方法按文档查询
根据给定文档从大规模文本语料库中检索相似的文档是许多应用程序的基本技术。然而,由于文档查询的特殊属性,例如高维、稀疏表示和语义关注,大多数现有的索引技术很难解决这个问题。为了解决这个问题,我们提出了一个基于文档分解思想的两级检索解决方案。通过降维方法将文档分解为一个紧凑向量和几个文档特定的关键字。压缩向量体现了文档的主要语义,文档特定关键词弥补了降维过程中丢失的判别能力。我们采用局部敏感哈希(locality sensitive hash, LSH)对压缩向量进行索引,保证根据查询文档的向量快速找到一组相关文档。然后我们根据文档特定的关键字对该集合中的文档重新排序。在实验中,我们在各种数据集上都获得了很好的准确性和性能结果。我们证明了该解决方案能够索引大规模语料库,以实现高效的基于相似度的文档检索。
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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