关联语言模型中基于语义聚类的伪关联反馈

Qiang Pu, Daqing He
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引用次数: 3

摘要

伪相关反馈通常被证明是提高检索效率的一种有效技术,但是顶级检索文档中的噪声仍然会导致主题漂移问题,从而影响某些主题的性能。通过将文档视为一组独立隐藏主题的交互,我们提出了一种新的使用独立成分分析的语义聚类技术。然后在语言建模框架内,我们将获得的语义主题聚类应用到查询采样过程中,使采样依赖于激活的主题而不是单个文档语言模型。因此,我们获得了一种基于语义聚类的关联语言模型,该模型采用伪关联反馈技术,不需要任何相关训练信息。我们将该模型应用于五个TREC数据集。实验表明,与传统的基于关联和聚类的检索语言模型相比,该模型可以显著提高检索性能。改进的主要贡献来自于对与查询密切相关的语义聚类的相关性模型的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pseudo relevance feedback using semantic clustering in relevance language model
Pseudo relevance feedback has demonstrated to be in general an effective technique for improving retrieval effectiveness, but the noise in the top retrieved documents still can cause topic drift problem that affects the performance of certain topics. By viewing a document as an interaction of a set of independent hidden topics, we propose a novel semantic clustering technique using independent component analysis. Then within the language modeling framework, we apply the obtained semantic topic clusters into the query sampling process so that the sampling depends on the activated topics rather than on the individual document language model. Therefore, we obtain a semantic cluster based relevance language model, which uses pseudo relevance feedback technique without requiring any relevance training information. We applied the model on five TREC data sets. The experiments show that our model can significantly improve retrieval performance over traditional language models including relevance-based and clustering-based retrieval language models. The main contribution of the improvements comes from the estimation of the relevance model on the semantic clusters that are closely related to the query.
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