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Metrics for Evaluating the Serendipity of Recommendation Lists

机译:评价推荐列表的偶然性的度量

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In this paper we propose metrics unexpectedness and unexpectedness_r for measuring the serendipity of recommendation lists produced by recommender systems. Recommender systems have been evaluated in many ways. Although prediction quality is frequently measured by various accuracy metrics, recommender systems must be not only accurate but also useful. A few researchers have argued that the bottom-line measure of the success of a recommender system should be user satisfaction. The basic idea of our metrics is that unexpectedness is the distance between the results produced by the method to be evaluated and those produced by a primitive prediction method. Here, unexpectedness is a metric for a whole recommendation list, while unexpectedness_r is that taking into account the ranking in the list. From the viewpoints of both accuracy and serendipity, we evaluated the results obtained by three prediction methods in experimental studies on television program recommendations.
机译:在本文中,我们提出了度量意外度和意外度_r的度量,以衡量推荐系统生成的推荐列表的偶然性。推荐系统已通过多种方式进行了评估。尽管预测质量经常由各种准确性指标来衡量,但推荐系统不仅必须准确,而且必须有用。一些研究人员认为,推荐系统成功的底线应该是用户满意度。我们度量标准的基本思想是意外性是要评估的方法产生的结果与原始预测方法产生的结果之间的距离。在此,意外情况是整个推荐列表的度量,而意外情况_r是考虑列表中排名的指标。从准确性和偶然性的角度,我们评估了在电视节目推荐的实验研究中通过三种预测方法获得的结果。

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