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Pseudo-Relevance Feedback for Information Retrieval in Medicine Using Genetic Algorithms

机译:基于遗传算法的医学信息伪相关反馈

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Pseudo-Relevance Feedback is one of the methods for improving search engine results. By automatically extracting information from a previous search result, a new query is posed as an expansion of the original query, and then it is searched again. In this paper, we apply a genetic algorithm to improve the Pseudo-Relevance Feedback method in searching medical texts. First, a set of candidate terms is constructed by extracting keywords from the documents returned from the initial search using the original query. Then, the seed terms are selected from the candidate term set using our proposed genetic algorithm, to be merged with the original query to create a new query. The new query is searched again, returning a final ranked list of documents. Experimental results on the TREC 2014 CDS dataset show that the proposed method outperforms the baseline method that does not use a genetic algorithm for Pseudo-Relevance Feedback.
机译:伪相关反馈是改善搜索引擎结果的方法之一。通过自动从先前的搜索结果中提取信息,新查询将作为原始查询的扩展而构成,然后再次进行搜索。在本文中,我们应用遗传算法改进了伪相关反馈方法在医学文献搜索中的应用。首先,通过使用原始查询从初始搜索返回的文档中提取关键字来构造一组候选词。然后,使用我们提出的遗传算法从候选词集中选择种子词,然后将其与原始查询合并以创建新查询。再次搜索新查询,返回最终排名的文档列表。 TREC 2014 CDS数据集上的实验结果表明,所提出的方法优于不使用遗传算法进行伪相关反馈的基线方法。

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