The problem of recommender system is very popular with myriad available solutions. A novel approach that uses the link prediction problem in social networks has been proposed in the literature that model the typical user-item information as a bipartite network in which link prediction would actually mean recommending an item to a user. The standard recommender system methods suffer from the problems of sparsity and scalability. Since link prediction measures involve computations pertaining to small neighborhoods in the network, this approach would lead to a scalable solution to recommendation. One of the issues in this conversion is that link prediction problem is modelled as a binary classification task whereas the problem of recommender systems is solved as a regression task in which the rating of the link is to be predicted. We overcome this issue by predicting top k links as recommendations with high ratings without predicting the actual rating. Our work extends similar approaches in the literature by focusing on exploiting the probabilistic measures for link prediction. Moreover, in the proposed approach, prediction measures that utilize temporal information available on the links prove to be more effective in improving the accuracy of prediction. This approach is evaluated on the benchmark 'Movielens' dataset. We show that the usage of temporal probabilistic measures helps in improving the quality of recommendations. Temporal random-walk based measure T_Flow improves recommendation accuracy by 4% and Temporal cooccurrence probability measure improves prediction accuracy by 10% over item-based collaborative filtering method in terms of AUROC score.
翻译:推荐人系统的问题非常受欢迎,有各种各样的现有解决办法。文献中提出了一种新颖的方法,将社会网络中的预测问题联系起来,将典型用户项目信息作为典型用户项目信息建模成双方网络,其中链接预测实际上意味着向用户推荐一个项目。标准推荐人系统方法存在宽度和可缩放性问题。由于连接的预测措施涉及计算网络中小街区的计算,因此,这一方法将导致对建议作出可伸缩的解决办法。这种转换中的问题之一是,将预测问题作为二进制分类任务来模拟,而建议人系统的问题则作为一种回归任务来解决,其中要预测链接的评级。我们通过预测高K链接,将建议推荐给用户,而不预测实际评级,来解决这个问题。我们的工作扩展了文献中的类似方法,重点是利用网络中小街区的概率性预测措施。此外,在拟议方法中,利用链接上的现有时间信息的预测措施证明,在提高预测准确性方面更为有效。在基准“Movielens OC ” 中,将建议系统的问题作为倒退问题作为回归人系统的问题作为回归任务解决,其中的评级。我们通过高评级来解决这个问题,不用预测方法,我们用时间测量标准衡量标准标准标准标准标准标准,我们用的是改进了标准标准标准方法,改进了标准标准方法。我们使用。