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Assessing ranking metrics in top-N recommendation

机译:评估TOP-N建议书中的排名指标

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摘要

The evaluation of recommender systems is an area with unsolved questions at several levels. Choosing the appropriate evaluation metric is one of such important issues. Ranking accuracy is generally identified as a prerequisite for recommendation to be useful. Ranking metrics have been adapted for this purpose from the Information Retrieval field into the recommendation task. In this article, we undertake a principled analysis of the robustness and the discriminative power of different ranking metrics for the offline evaluation of recommender systems, drawing from previous studies in the information retrieval field. We measure the robustness to different sources of incompleteness that arise from the sparsity and popularity biases in recommendation. Among other results, we find that precision provides high robustness while normalized discounted cumulative gain offers the best discriminative power. In dealing with cold users, we also find that the geometric mean is more robust than the arithmetic mean as aggregation function over users.
机译:推荐系统的评估是几个层次的一个区域。选择适当的评估度量是如此重要的问题之一。排名准确性通常被确定为建议有用的先决条件。为此目的进行了排名指标,从信息检索字段中进入推荐任务。在本文中,我们对建议制度的离线评估进行了对不同排名指标的稳健性和歧视性的原则性分析,从信息检索领域的先前研究中绘制。我们衡量对不同的不完整来源的稳健性,这些来源来自推荐中的稀疏性和普及偏见。除其他结果之外,我们发现精度提供高稳健性,而标准化的折扣累积增益提供最佳辨别力。在处理寒冷的用户时,我们还发现几何平均值比算术均值更强大,而不是用户聚合功能。

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