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Ranking with Auxiliary Data

机译:辅助数据排名

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摘要

Learning to rank arises in many information retrieval applications, ranging from Web search engine, online advertising to recommendation system. In learning to rank, the performance of a ranking function heavily depends on the number of labeled examples in the training set; on the other hand, obtaining labeled examples for training data is very expensive and time-consuming. This presents a great need for making use of available auxiliary data, i.e., the within-domain unlabeled data and the out-of-domain labeled data. In this paper, we propose a general framework for ranking with auxiliary data, which is applicable to various ranking applications. Under this framework, we derive a generic ranking algorithm to effectively make use of both the within-domain unlabeled data and the out-of-domain labeled data. The proposed algorithm iteratively learns ranking functions for target domain and source domains and enforces their consensus on the unlabeled data in the target domain.
机译:学习排名出现在许多信息检索应用程序中,从Web搜索引擎,在线广告到推荐系统。在学习排名时,排名功能的表现在很大程度上取决于训练集中标记的示例的数量。另一方面,获得带有标签的训练数据示例非常昂贵且耗时。这就非常需要利用可用的辅助数据,即域内未标记的数据和域外未标记的数据。在本文中,我们提出了使用辅助数据进行排名的通用框架,该框架适用于各种排名应用程序。在此框架下,我们推导了一种通用排序算法,可以有效地利用域内未标记数据和域外未标记数据。所提出的算法迭代地学习目标域和源域的排序函数,并在目标域中的未标记数据上强制执行它们的共识。

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