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Unsupervised Link Prediction Using Aggregative Statistics on Heterogeneous Social Networks

机译:异构社交网络上使用聚合统计的无监督链接预测

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摘要

The concern of privacy has become an important issue for online social networks. In services such as Foursquare.com, whether a person likes an article is considered private and therefore not disclosed; only the aggregative statistics of articles (i.e., how many people like this article) is revealed. This paper tries to answer a question: can we predict the opinion holder in a heterogeneous social network without any labeled data? This question can be generalized to a link prediction with aggregative statistics problem. This paper devises a novel unsupervised framework to solve this problem, including two main components: (1) a three-layer factor graph model and three types of potential functions; (2) a ranked-margin learning and inference algorithm. Finally, we evaluate our method on four diverse prediction scenarios using four datasets: preference (Foursquare), repost (Twitter), response (Plurk), and citation (DBLP). We further exploit nine unsupervised models to solve this problem as baselines. Our approach not only wins out in all scenarios, but on the average achieves 9.90% AUC and 12.59% NDCG improvement over the best competitors.
机译:对隐私的关注已经成为在线社交网络的重要问题。在Foursquare.com等服务中,是否喜欢某人的文章被认为是私人的,因此不予披露;仅显示文章的汇总统计信息(即,有多少人喜欢这篇文章)。本文试图回答一个问题:我们可以在没有任何标签数据的情况下预测异构社交网络中的观点持有者吗?这个问题可以推广到具有聚合统计问题的链接预测。本文设计了一个新颖的无监督框架来解决这个问题,包括两个主要组成部分:(1)三层因子图模型和三种类型的势函数; (2)排序裕度学习和推理算法。最后,我们使用四个数据集在四个不同的预测场景上评估我们的方法:偏好(Foursquare),转发(Twitter),响应(Plurk)和引文(DBLP)。我们进一步利用9个无监督模型来解决此问题,以此作为基准。我们的方法不仅在所有情况下均获胜,而且与最佳竞争对手相比,平均可实现9.90%的AUC和12.55%的NDCG改善。

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