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Recommending people to people: the nature of reciprocal recommenders with a case study in online dating

机译:在人与人之间推荐:互惠推荐者的性质以及在线约会中的案例研究

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摘要

People-to-people recommenders constitute an important class of recommender systems. Examples include online dating, where people have the common goal of finding a partner, and employment websites where one group of users needs to find a job (employer) and another group needs to find an employee. People-to-people recommenders differ from the traditional items-to-people recommenders as they must satisfy both parties; we call this type of recommender reciprocal. This article is the first to present a comprehensive view of this important recommender class. We first identify the characteristics of reciprocal recommenders and compare them with traditional recommenders, which are widely used in e-commerce websites. We then present a series of studies and evaluations of a content-based reciprocal recommender in the domain of online dating. It uses a large dataset from a major online dating website. We use this case study to illustrate the distinctive requirements of reciprocal recommenders and highlight important challenges, such as the need to avoid bad recommendations since they may make users to feel rejected. Our experiments indicate that, by considering reciprocity, the rate of successful connections can be significantly improved. They also show that, despite the existence of rich explicit profiles, the use of implicit profiles provides more effective recommendations. We conclude with a discussion, linking our work in online dating to the many other domains that require reciprocal recommenders. Our key contributions are the recognition of the reciprocal recommender as an important class of recommender, the identification of its distinctive characteristics and the exploration of how these impact the recommendation process in an extensive case study in the domain of online dating.
机译:人与人之间的推荐人构成了推荐人系统的重要类别。例如,在线约会(人们的共同目标是寻找合作伙伴)和就业网站,其中一组用户需要找到工作(雇主),另一组用户需要找到雇员。人与人的推荐人与传统的人与人的推荐人不同,因为它们必须使双方都满意。我们称这种类型的推荐人互惠。本文是第一篇全面介绍此重要推荐器类的文章。我们首先确定互惠推荐器的特征,并将其与在电子商务网站中广泛使用的传统推荐器进行比较。然后,我们介绍了在线约会领域中基于内容的相互推荐者的一系列研究和评估。它使用来自主要在线约会网站的大型数据集。我们使用此案例研究来说明互惠推荐者的独特要求,并强调重要的挑战,例如需要避免不良推荐,因为它们可能会使用户感到被拒绝,因此需要避免。我们的实验表明,通过考虑对等性,可以显着提高成功连接的速度。他们还表明,尽管存在丰富的显式配置文件,但隐式配置文件的使用提供了更有效的建议。我们以讨论结尾,将在线约会的工作与需要相互推荐的许多其他领域联系在一起。我们的主要贡献是,在在线约会领域的广泛案例研究中,将对等推荐人确认为重要的推荐人类别,确定其独特特征,并探索这些特征如何影响推荐过程。

著录项

  • 来源
    《User Modeling and User-Adapted Interaction》 |2013年第5期|447-488|共42页
  • 作者单位

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

    Computer Human Adapted Interaction (CHAI) School of Information Technologies University of Sydney">(1);

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Recommender systems; Online dating; Reciprocity;

    机译:推荐系统;在线约会;互惠互利;

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