成本敏感的信息检索支持向量排序

Fengxia Wang, Xiao Chang
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引用次数: 2

摘要

近年来,研究人员提出了学习排序的算法。然而,在信息检索中,排序实例是不平衡的。在将秩实例组成成对后,秩对也不平衡。本文提出了一种代价敏感的风险最小两两学习模型,用于对不平衡数据集进行排序。在此基础上,研究了代价敏感支持向量学习排序算法。在实验中,使用标准排序支持向量机作为基线。实验中使用了文档检索数据集。实验结果表明,在两个秩不平衡数据集上,代价敏感支持向量学习排序的性能优于排序支持向量机。
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Cost-Sensitive Support Vector Ranking for Information Retrieval
In recent years, the algorithms of learning to rank have been proposed by researchers. However, in information retrieval, instances of ranks are imbalanced. After the instances of ranks are composed to pairs, the pairs of ranks are imbalanced too. In this paper, a cost-sensitive risk minimum model of pairwise learning to rank imbalanced data sets is proposed. Following this model, the algorithm of cost-sensitive supported vector learning to rank is investigated. In experiment, the standard Ranking SVM is used as baseline. The document retrieval data set is used in experiment. The experiment results show that the performance of cost-sensitive support vector learning to rank is better than Ranking SVM on two rank imbalanced data sets.
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