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The Study of Methods for Language Model Based Positive and Negative Relevance Feedback in Information Retrieval

机译:信息检索中基于正负相关反馈的语言模型方法研究

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摘要

Relevance feedback techniques are important to Information retrieval (IR), which can effectively improve the performance of IR. The feedback includes positive and negative relevance one. The most of the previous work using feedback have focused on positive relevance feedback and pseudo relevance feedback in IR. In recent years, some work has been done and investigated the negative relevance feedback in IR. However, this paper highlights the incorporation or integration between the language models based positive and negative relevance feedback in IR, and through positive and negative feedback documents proportion on queries classification, with different parameters adjustment of positive and negative feedback ratio, where both types of feedback are used to modify and expand the user's query model. Our experimental results of using several TREC collections show that this method is significantly outperform the relevance feedback and pseudo relevance feedback in terms of the retrieval accuracy.
机译:相关性反馈技术对于信息检索(IR)很重要,它可以有效地提高IR的性能。反馈包括正面和负面的相关性之一。先前使用反馈的大多数工作都集中在IR中的正相关反馈和伪相关反馈。近年来,已经完成了一些工作,并研究了IR中的负相关反馈。但是,本文重点介绍了基于正负相关反馈的语言模型在IR中的整合或集成,并通过正负文档的比例对查询分类,正负反馈率的不同参数进行调整,其中两种反馈类型用于修改和扩展用户的查询模型。我们使用多个TREC集合的实验结果表明,就检索准确性而言,该方法明显优于相关性反馈和伪相关性反馈。

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