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Query Model Refinement Using Word Graphs

机译:使用字图查询模型细化

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摘要

Pseudo relevance feedback method is an effective method for query model refinement. Most existing pseudo relevance feedback methods only take into consideration the term distribution of the feedback documents, but omit the term's context information. This paper presents a graph-based method to improve query models, in which a word graph is constructed to encode terms and their co-occurrence dependencies within the feedback documents. Using a random walk, the weight of each term in the graph can be determined in a context-dependent manner, i.e. the weight of a term is strongly dependent on the weights of the connected context terms. Our experimental results on four TREC collections show that our proposed approach is more effective than the existing state-of-the-art approaches.
机译:伪相关反馈方法是一种有效的查询模型细化方法。大多数现有的伪相关性反馈方法仅考虑反馈文档的术语分布,而忽略了术语的上下文信息。本文提出了一种基于图的方法来改进查询模型,其中构造了一个词图来对术语及其在反馈文档中的共现依存关系进行编码。使用随机游走,可以以上下文相关的方式确定图中每个术语的权重,即,术语的权重强烈取决于所连接的上下文术语的权重。我们对四个TREC集合的实验结果表明,我们提出的方法比现有的最新方法更有效。

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