A machine learning approach for improved BM25 retrieval

K. Svore, C. Burges
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引用次数: 66

Abstract

Despite the widespread use of BM25, there have been few studies examining its effectiveness on a document description over single and multiple field combinations. We determine the effectiveness of BM25 on various document fields. We find that BM25 models relevance on popularity fields such as anchor text and query click information no better than a linear function of the field attributes. We also find query click information to be the single most important field for retrieval. In response, we develop a machine learning approach to BM25-style retrieval that learns, using LambdaRank, from the input attributes of BM25. Our model significantly improves retrieval effectiveness over BM25 and BM25F. Our data-driven approach is fast, effective, avoids the problem of parameter tuning, and can directly optimize for several common information retrieval measures. We demonstrate the advantages of our model on a very large real-world Web data collection.
改进BM25检索的机器学习方法
尽管BM25被广泛使用,但很少有研究检验其在单场和多场组合的文件描述中的有效性。我们确定了BM25在各种文档字段上的有效性。我们发现BM25模型对热门字段(如锚文本和查询点击信息)的相关性并不比字段属性的线性函数更好。我们还发现查询点击信息是检索中最重要的字段。作为回应,我们开发了一种BM25风格检索的机器学习方法,使用LambdaRank从BM25的输入属性中学习。我们的模型显著提高了BM25和BM25F的检索效率。我们的数据驱动方法快速、有效,避免了参数调优问题,并且可以直接对几种常见的信息检索方法进行优化。我们在一个非常大的真实Web数据集合上展示了我们的模型的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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