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ListOPT: Learning to Optimize for XML Ranking

机译:ListOPT:学习优化XML排名

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摘要

Many machine learning classification technologies such as boosting, support vector machine or neural networks have been applied to the ranking problem in information retrieval. However, since the purpose of these learning-to-rank methods is to directly acquire the sorted results based on the features of documents, they are unable to combine and utilize the existing ranking methods proven to be effective such as BM25 and PageRank. To solve this defect, we conducted a study on learning-to-optimize, which is to construct a learning model or method for optimizing the free parameters in ranking functions. This paper proposes a listwise learning-to-optimize process ListOPT and introduces three alternative differentiable query-level loss functions. The experimental results on the XML dataset of Wikipedia English show that these approaches can be successfully applied to tuning the parameters used in an existing highly cited ranking function BM25. Furthermore, we found that the formulas with optimized parameters indeed improve the effectiveness compared with the original ones.
机译:许多机器学习分类技术,例如boost,支持向量机或神经网络,已应用于信息检索中的排名问题。但是,由于这些排名学习方法的目的是直接获取基于文档​​特征的排序结果,因此它们无法组合和利用已证明有效的现有排名方法,例如BM25和PageRank。为了解决这一缺陷,我们进行了“学习优化”的研究,即构建一种学习模型或方法来优化排序函数中的自由参数。本文提出了一种基于列表的学习优化过程ListOPT,并介绍了三种可选的可微分查询级损失函数。在Wikipedia English的XML数据集上的实验结果表明,这些方法可以成功地应用于调整现有高度引用的排名函数BM25中使用的参数。此外,我们发现具有优化参数的公式与原始公式相比确实提高了有效性。

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