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A Link Prediction Approach to Recommendations in Large-Scale User-Generated Content Systems

机译:大型用户生成的内容系统中建议的链接预测方法

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Recommending interesting and relevant content from the vast repositories of User-Generated Content systems (UGCs) such as YouTube, Flickr and Digg is a significant challenge. Part of this challenge stems from the fact that classical collaborative filtering techniques - such as k-Nearest Neighbor - cannot be assumed to perform as well in UGCs as in other applications. Such technique has severe limitations regarding data sparsity and scalability that are unfitting for UGCs. In this paper, we employ adaptations of popular Link Prediction algorithms that were shown to be effective in massive online social networks for recommending items in UGCs. We evaluate these algorithms on a large dataset we collect from Flickr. Our results suggest that Link Prediction algorithms are a more scalable and accurate alternative to classical collaborative filtering in the context of UGCs. Moreover, our experiments show that the algorithms considering the immediate neighborhood of users in an user-item graph to recommend items outperform the algorithms that use the entire graph structure for the same. Finally, we find that, contrary to intuition, exploiting explicit social links among users in the recommendation algorithms improves only marginally their performance.
机译:从YouTube,Flickr和Digg等用户生成的内容系统(UGC)的大量存储库中推荐有趣且相关的内容是一项重大挑战。这一挑战的部分原因是,不能假定经典的协作过滤技术(例如k最近邻)在UGC中的性能不如其他应用程序。这种技术在数据稀疏性和可伸缩性方面存在严重的局限性,不适用于UGC。在本文中,我们采用了流行的Link Prediction算法的改编方法,这些算法在大型在线社交网络中对推荐UGC的项目非常有效。我们在从Flickr收集的大型数据集上评估这些算法。我们的结果表明,在UGC的上下文中,链接预测算法是经典协作过滤的更可扩展且更准确的替代方法。此外,我们的实验表明,考虑用户在用户项目图中推荐用户直接相邻的算法优于使用整个图结构的算法。最后,我们发现,与直觉相反,在推荐算法中利用用户之间的显式社交链接只能稍微改善其性能。

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