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首页> 外文期刊>Malaysian Journal of Computer Science >Improving the Relevancy of Document Search using the Multi-Term Adjacency Keyword-Order Model
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Improving the Relevancy of Document Search using the Multi-Term Adjacency Keyword-Order Model

机译:使用多词邻接关键字顺序模型提高文档搜索的相关性

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This paper presents an enhanced vector space model, Multi-Term Adjacency Keyword-Order Model, to improve the relevancy of search results, specifically document search. Our model is based on the concept of keyword grouping. The keyword-order relationship in the adjacency terms is taken into consideration in measuring a term weight. Assigning more weights to adjacency terms in a query order results in the document vector being moved closer to the query vector, and hence increases the relevancy between the two vectors and thus eventually results in documents with better relevancy being retrieved. The performance of our model is measured based on precision metrics against the performance of a classic vector space model and the performance of a Multi-Term Vector Space Model. Results show that our model performs better in retrieving more relevant results based on a particular search query compared to both the other models.
机译:本文提出了一种增强的向量空间模型,即多词邻接关键字顺序模型,以提高搜索结果的相关性,尤其是文档搜索的相关性。我们的模型基于关键字分组的概念。在测量术语权重时,应考虑相邻术语中的关键字顺序关系。按查询顺序向邻接项分配更多权重会导致文档向量更靠近查询向量,从而增加两个向量之间的相关性,最终导致检索到具有更好相关性的文档。我们的模型的性能是根据精度指标对经典向量空间模型的性能和多项向量空间模型的性能进行衡量的。结果表明,与其他两个模型相比,我们的模型在基于特定搜索查询检索更多相关结果方面表现更好。

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