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Modeling Reformulation Using Passage Analysis

机译:使用通道分析对重新配方建模

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Query reformulation modifies the original query with the aim of better matching the vocabulary of the relevant documents, and consequently improving ranking effectiveness. Previous techniques typically generate words and phrases related to the original query, but do not consider how these words and phrases would fit together in new queries. In this paper, we focus on an implementation of an approach that models reformulation as a distribution of queries, where each query is a variation of the original query. This approach considers a query as a basic unit and can capture important dependencies between words and phrases in the query. The implementation discussed here is based on passage analysis of the target corpus. Experiments on the TREC collection show that the proposed model for query reformulation significantly outperforms state-of-the-art methods.
机译:查询重新编制对原始查询进行了修改,目的是更好地匹配相关文档的词汇,从而提高排名效率。先前的技术通常会生成与原始查询有关的单词和短语,但没有考虑这些单词和短语在新查询中如何组合在一起。在本文中,我们集中于一种方法的实现,该方法将重新格式化建模为查询的分布,其中每个查询都是原始查询的变体。这种方法将查询视为基本单位,并且可以捕获查询中单词和短语之间的重要依存关系。这里讨论的实现是基于目标语料库的段落分析。在TREC集合上进行的实验表明,所提出的查询重构模型明显优于最新方法。

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