AR-CF: Augmenting Virtual Users and Items in Collaborative Filtering for Addressing Cold-Start Problems

Dong-Kyu Chae, Jihoo Kim, Duen Horng Chau, Sang-Wook Kim
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引用次数: 42

Abstract

Cold-start problems are arguably the biggest challenges faced by collaborative filtering (CF) used in recommender systems. When few ratings are available, CF models typically fail to provide satisfactory recommendations for cold-start users or to display cold-start items on users' top-N recommendation lists. Data imputation has been a popular choice to deal with such problems in the context of CF, filling empty ratings with inferred scores. Different from (and complementary to) data imputation, this paper presents AR-CF, which stands for Augmented Reality CF, a novel framework for addressing the cold-start problems by generating virtual, but plausible neighbors for cold-start users or items and augmenting them to the rating matrix as additional information for CF models. Notably, AR-CF not only directly tackles the cold-start problems, but is also effective in improving overall recommendation qualities. Via extensive experiments on real-world datasets, AR-CF is shown to (1) significantly improve the accuracy of recommendation for cold-start users, (2) provide a meaningful number of the cold-start items to display in top-N lists of users, and (3) achieve the best accuracy as well in the basic top-N recommendations, all of which are compared with recent state-of-the-art methods.
AR-CF:在解决冷启动问题的协同过滤中增加虚拟用户和项目
冷启动问题可以说是协同过滤(CF)在推荐系统中所面临的最大挑战。当可用的评级很少时,CF模型通常无法为冷启动用户提供令人满意的推荐,或者无法在用户的top-N推荐列表中显示冷启动项。在CF上下文中,数据输入一直是处理此类问题的流行选择,用推断的分数填充空评级。不同于(并补充)数据输入,本文提出了AR-CF,即增强现实CF,这是一个解决冷启动问题的新框架,它通过为冷启动用户或项目生成虚拟但可信的邻居,并将其作为CF模型的附加信息增加到评级矩阵中。值得注意的是,AR-CF不仅直接解决了冷启动问题,而且有效地提高了整体推荐质量。通过对真实世界数据集的大量实验,AR-CF被证明(1)显著提高了冷启动用户推荐的准确性,(2)提供了有意义的冷启动项目数量,以显示在用户的top-N列表中,(3)在基本的top-N推荐中也达到了最好的准确性,所有这些都与最近最先进的方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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