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Using a Critic to Promote Less Popular Candidates in a People-to-People Recommender System

机译:使用评论家在人对人推荐系统中宣传不太受欢迎的候选人

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This paper shows how to improve the recommendations of an interaction-based collaborative filtering (IBCF) recommender used in online dating. Previous work has shown that IBCF works well in this domain, although it tends to rank popular candidates highly, which leads to these users receiving a large number of contacts. We address this problem by using a Decision Tree model as a "critic" to re-rank the candidates generated by IBCF, effectively promoting less popular candidates. This method was first evaluated on historical data from a large online dating site and then trialled live on the same site by providing recommendations to a large number of users throughout a 9 week period. The live trial confirmed the consistency of the analysis on historical data and the ability of the method to generate suitable candidates over an extended period. Our recommendations gave higher success rates than those for a control group made with a baseline recommender.
机译:本文展示了如何改进在线约会中使用的基于交互的协作筛选(IBCF)推荐器的推荐。先前的工作表明,IBCF在该领域中表现良好,尽管它倾向于对受欢迎的候选人进行高度排名,这导致这些用户获得了大量的联系。我们通过使用决策树模型作为“评论家”来重新排序IBCF生成的候选人,从而有效地促进了不太受欢迎的候选人,从而解决了这个问题。该方法首先根据大型在线约会网站的历史数据进行评估,然后在9周的时间内为大量用户提供推荐,从而在同一网站上进行了现场试用。现场试验证实了对历史数据的分析的一致性,以及该方法能够在更长的时间内生成合适的候选者的能力。与使用基线推荐器的对照组相比,我们的推荐获得了更高的成功率。

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