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Learning to Rank Documents Using Similarity Information between Objects

机译:学习使用对象之间的相似信息排列文档

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Most existing learning to rank methods only use content relevance of objects with respect to queries to rank objects. However, they ignore relationships among objects. In this paper, two types of relationships between objects, topic based similarity and word based similarity, are combined together to improve the performance of a ranking model. The two types of similarities are calculated using LDA and tf-idf methods, respectively. A novel ranking function is constructed based on the similarity information. Traditional gradient descent algorithm is used to train the ranking function. Experimental results prove that the proposed ranking function has better performance than the traditional ranking function and the ranking function only incorporating word based similarity between documents.
机译:大多数现有的学习对等级方法仅使用对象的内容相关性与对象的查询相对于查询。但是,他们忽略了物体之间的关系。在本文中,对象,基于主题的相似性和基于词的相似性之间的两种关系组合在一起,以提高排名模型的性能。使用LDA和TF-IDF方法计算两种类型的相似性。基于相似性信息构建新颖的排名功能。传统的梯度下降算法用于训练排名功能。实验结果证明,所提出的排名函数比传统的排名函数和排名函数具有更好的性能,只能在文档之间结合基于词的相似性。

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