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Popularity Tendency Analysis of Ranking-Oriented Collaborative Filtering from the Perspective of Loss Function

机译:损失函数视角下基于排名的协同过滤的流行趋势分析

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Collaborative filtering (CF) has been the most popular approach for recommender systems in recent years. In order to analyze the property of a ranking-oriented CF algorithm directly and be able to improve its performance, this paper investigates the ranking-oriented CF from the perspective of loss function. To gain the insight into the popular bias problem, we also study the tendency of a CF algorithm in recommending the most popular items, and show that such popularity tendency can be adjusted through setting different parameters in our models. After analyzing two state-of-the-art algorithms, we propose in this paper two models using the generalized logistic loss function and the hinge loss function, respectively. The experimental results show that the proposed methods outperform the state-of-the-art algorithms on two real data sets.
机译:近年来,协作过滤(CF)已成为推荐系统中最流行的方法。为了直接分析面向排序的CF算法的性质并提高其性能,本文从损失函数的角度研究了面向排序的CF算法。为了深入了解流行偏差问题,我们还研究了CF算法推荐最流行商品的趋势,并表明可以通过在模型中设置不同的参数来调整这种流行趋势。在分析了两种最先进的算法之后,我们在本文中分别提出了两个模型,分别使用广义逻辑损失函数和铰链损失函数。实验结果表明,所提出的方法在两个真实数据集上的性能优于最新算法。

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