Recommendation Quality Evolution Based on Neighbors Discrimination

Z. Zaier, R. Godin, L. Faucher
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引用次数: 5

Abstract

An "automated recommender system" plays an essential role in e-commerce applications. Such systems try to recommend items (movies, music, books, news, etc.) which the user should be interested in. The spectrum of proposed recommendation algorithms are based on information including content of the items, ratings of the users, and demographic information about the users. These systems hold the promise of delivering high quality recommendations. However, the incredible growth of users and applications bring some key challenges for recommender systems. One of the concerns in current recommenders is that the quality of recommendations is strongly dependant on the neighborhood size and quality. In this paper, we propose a new peer-to-peer architecture based on prior selection of the neighbors. We investigate the evolution of different recommendation techniques performance, coverage and quality of prediction. Also, we identify which recommendation method would be the most efficient with this new peer-to-peer architecture.
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基于邻域识别的推荐质量进化
“自动推荐系统”在电子商务应用中起着至关重要的作用。这样的系统会尝试推荐用户可能感兴趣的项目(电影、音乐、书籍、新闻等)。所提出的推荐算法的频谱是基于信息的,包括项目的内容、用户的评分和用户的人口统计信息。这些系统承诺提供高质量的推荐。然而,用户和应用程序的惊人增长给推荐系统带来了一些关键的挑战。当前推荐器的一个问题是,推荐的质量强烈依赖于邻域的大小和质量。在本文中,我们提出了一种新的基于邻居先验选择的点对点架构。我们研究了不同推荐技术的发展,性能,覆盖率和预测质量。此外,我们还确定了哪种推荐方法在这种新的点对点架构中是最有效的。
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