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Collaborative filtering-based recommendation of online social voting

机译:基于协作过滤的在线社交投票推荐

摘要

Social voting is an emerging new feature in online social networks. It poses unique challenges and opportunities for recommendation. In this paper, we develop a set of matrix-factorization (MF) and nearest-neighbor (NN)-based recommender systems (RSs) that explore user social network and group affiliation information for social voting recommendation. Through experiments with real social voting traces, we demonstrate that social network and group affiliation information can significantly improve the accuracy of popularity-based voting recommendation, and social network information dominates group affiliation information in NN-based approaches. We also observe that social and group information is much more valuable to cold users than to heavy users. In our experiments, simple metapath-based NN models outperform computation-intensive MF models in hot-voting recommendation, while users' interests for nonhot votings can be better mined by MF models. We further propose a hybrid RS, bagging different single approaches to achieve the best top-k hit rate.
机译:社交投票是在线社交网络中新兴的新功能。它提出了独特的挑战和机会。在本文中,我们开发了一套基于矩阵分解(MF)和最近邻(NN)的推荐系统(RSs),用于探索用户社交网络和群体隶属信息以进行社会投票推荐。通过对真实社会投票轨迹的实验,我们证明了社交网络和群体隶属信息可以显着提高基于受欢迎度的投票推荐的准确性,并且社交网络信息在基于NN的方法中支配着群体隶属信息。我们还观察到,社交和群体信息对冷用户而言比对重用户而言更有价值。在我们的实验中,基于简单路径的NN模型在热投票推荐中优于计算密集型MF模型,而MF模型可以更好地挖掘用户对非热投票的兴趣。我们进一步提出了一种混合RS,采用不同的单一方法来实现最佳的top-k命中率。

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