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Recommendation Quality Evolution Based on Neighborhood Size

机译:基于邻域大小的推荐质量进化

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Automated recommender systems play an important role in e-commerce applications. Such systems recommend items (movies, music, books, news, web pages, etc.) that the user should be interested in. These systems hold the promise of delivering high quality recommendations. However, the incredible growth of users and applications poses some challenges for recommender systems. One of the concerns for current recommenders is that the quality of recommendations is strongly dependant on the size of the user''s population. In this paper we investigate, with the scaling of neighborhood size, the evolution of different recommendation techniques performance, the increase of the coverage, and the quality of prediction. We also identify which recommendation method is the most efficient given reasonably small training datasets.
机译:自动推荐系统在电子商务应用中发挥着重要作用。此类系统推荐用户应该感兴趣的物品(电影,音乐,书籍,新闻,网页等)。这些系统持有提供高质量建议的承诺。但是,用户和应用程序的令人难以置信的增长对推荐系统带来了一些挑战。目前推荐人的一个问题是,建议质量强烈依赖于用户人口的规模。在本文中,我们调查,随着邻域大小的缩放,不同推荐技术的演变,覆盖率的增加以及预测的质量。我们还确定哪种推荐方法是给出了合理的小型训练数据集最有效的方法。

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