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A SURVEY ON LEARNING TO RANK

机译:学习评级研究

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摘要

Ranking is the key problem for information retrieval and other text applications. Recently, the ranking methods based on machine learning approaches, called learning to rank, become the focus for researchers and practitioners. The main idea of these methods is to apply the various existing and effective algorithms on machine learning to ranking. However, as a learning problem, ranking is different from other classical ones such as classification and regression. In this paper, we investigate the important papers in this direction; the cons and pros of the recent-proposed framework and algorithms for ranking are analyzed, and the relationships among them are discussed. Finally, the promising directions in practice are also pointed out.
机译:排名是信息检索和其他文本应用程序的关键问题。最近,基于机器学习方法的排名方法(称为学习排名)成为研究人员和从业人员关注的焦点。这些方法的主要思想是将各种现有的有效的机器学习算法应用于排名。但是,作为学习问题,排名与其他经典排名(例如分类和回归)不同。在本文中,我们研究了这一方向上的重要论文。分析了最近提出的排名框架和算法的优缺点,并讨论了它们之间的关系。最后,指出了实践中的发展方向。

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