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Learning to rank with document ranks and scores

机译:学习按文档等级和分数进行排名

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摘要

The problem of "Learning to rank" is a popular research topic in Information Retrieval (IR) and machine learning communities. Some existing list-wise methods, such as AdaRank, directly use the IR measures as performance functions to quantify how well a ranking function can predict rankings. However, the IR measures only count for the document ranks, but do not consider how well the algorithm predicts the relevance scores of documents. These methods do not make best use of the available prior knowledge and may lead to suboptimal performance. Hence, we conduct research by combining both the document ranks and relevance scores. We propose a novel performance function that encodes the relevance scores. We also define performance functions by combining our proposed one with MAP or NDCG, respectively. The experimental results on the benchmark data collections show that our methods can significantly outperform the state-of-the-art AdaRank baselines.
机译:“学习排名”问题是信息检索(IR)和机器学习社区中的热门研究主题。一些现有的基于列表的方法,例如AdaRank,直接使用IR度量作为性能函数来量化排名函数可以预测排名的程度。但是,IR度量仅计入文档等级,而没有考虑算法对文档相关性分数的预测程度。这些方法没有充分利用现有的先验知识,并且可能导致性能欠佳。因此,我们通过结合文档等级和相关性得分来进行研究。我们提出了一种新颖的对相关分数进行编码的性能函数。我们还将建议的功能分别与MAP或NDCG相结合来定义性能功能。在基准数据收集上的实验结果表明,我们的方法可以大大优于最新的AdaRank基线。

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