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Classification, Ranking, and Top-K Stability of Recommendation Algorithms

机译:推荐算法的分类,排名和Top-K稳定性

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Recommendation stability measures the extent to which a recommendation algorithm provides predictions that are consistent with each other. Several approaches have been proposed in prior work to defining, measuring, and improving the stability of recommendation algorithms. Previous studies have focused primarily on understanding and evaluating recommendation stability in prediction-oriented settings, i.e., recommendation settings where it is crucial to provide the precise prediction of a user's preference rating for an item. However, the research literature has been largely silent on the topic of recommendation stability in other important types of settings, such as classification-oriented (i.e., where it is important to accurately classify the item as relevant versus irrelevant, without having to quantify the user's preference precisely), ranking-oriented (i.e., where it is important to provide accurate relative ranking of items to users), or top-K oriented (i.e., where it is important to suggest K items that are most appealing to the user). Therefore, this paper builds on prior work by generalizing the notion of stability to a broader set of recommendation settings and developing corresponding stability metrics. The paper also provides a comprehensive empirical analysis of classification, ranking, and top-K stability performance of popular recommender algorithms on real-world rating data sets under a variety of settings.
机译:推荐稳定性衡量推荐算法提供彼此一致的预测的程度。在先前的工作中已经提出了几种方法来定义,测量和改进推荐算法的稳定性。先前的研究主要集中在理解和评估面向预测的设置中的推荐稳定性,即在对用户对某项商品的偏好等级进行精确预测至关重要的推荐设置中。但是,研究文献在其他重要类型的设置中,例如在面向分类的情况下,即在推荐稳定性方面一直保持沉默(即,在无需量化用户的使用情况的情况下,准确地将项目分类为相关与不相关是很重要的)确切地说是“偏好”),面向排名(即,向用户提供准确的商品相对排名很重要)或面向前K(即,向用户建议最有吸引力的K个项目很重要)。因此,本文通过将稳定性的概念推广到更广泛的推荐设置集并开发相应的稳定性指标来构建先前的工作。本文还提供了对各种环境下真实评级数据集上流行的推荐算法的分类,排名和top-K稳定性能的综合经验分析。

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