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The Magic Barrier of Recommender Systems - No Magic, Just Ratings

机译:推荐系统的魔法障碍 - 没有魔法,只是评分

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Recommender Systems need to deal with different types of users who represent their preferences in various ways. This difference in user behaviour has a deep impact on the final performance of the recommender system, where some users may receive either better or worse recommendations depending, mostly, on the quantity and the quality of the information the system knows about the user. Specifically, the inconsistencies of the user impose a lower bound on the error the system may achieve when predicting ratings for that particular user. In this work, we analyse how the consistency of user ratings (coherence) may predict the performance of recommendation methods. More specifically, our results show that our definition of coherence is correlated with the so-called magic barrier of recommender systems, and thus, it could be used to discriminate between easy users (those with a low magic barrier) and difficult ones (those with a high magic barrier). We report experiments where the rating prediction error for the more coherent users is lower than that of the less coherent ones. We further validate these results by using a public dataset, where the magic barrier is not available, in which we obtain similar performance improvements.
机译:推荐系统需要处理不同类型的用户谁代表了不同的方式他们的喜好。在用户行为的这种差异对推荐系统,最终表现产生了深刻影响,其中一些用户可能会收到更好或更坏的建议取决于居多,在数量上和系统知道用户的信息的质量。具体地,用户的不一致性处以下界误差预测针对该特定用户的评分时,系统可以实现的。在这项工作中,我们分析用户的收视率(一致性)的一致性如何可以预测的推荐方法的性能。更具体地,我们的结果表明,我们的一致性的定义与推荐系统的所谓魔屏障相关,并且因此,它可以用来(容易用户(那些具有低魔法屏障)和困难的问题之间进行区分那些具有高魔法屏障)。我们报告的实验,其中用于更连贯的用户评级预测误差比少相干的人低。我们通过使用公共数据集,其中的魔法屏障是不可用的,我们在其中获得类似的性能改进进一步验证这些结果。

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