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Supervised Random Walks: Predicting and Recommending Links in Social Networks

机译:有监督的随机游走:预测和推荐社交网络中的链接

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Predicting the occurrence of links is a fundamental problem in networks. In the link prediction problem we are given a snapshot of a network and would like to infer which interactions among existing members are likely to occur in the near future or which existing interactions are we missing. Although this problem has been extensively studied, the challenge of how to effectively combine the information from the network structure with rich node and edge attribute data remains largely open.We develop an algorithm based on Supervised Random Walks that naturally combines the information from the network structure with node and edge level attributes. We achieve this by using these attributes to guide a random walk on the graph. We formulate a supervised learning task where the goal is to learn a function that assigns strengths to edges in the network such that a random walker is more likely to visit the nodes to which new links will be created in the future. We develop an efficient training algorithm to directly learn the edge strength estimation function.Our experiments on the Facebook social graph and large collaboration networks show that our approach outperforms state-of-the-art unsupervised approaches as well as approaches that are based on feature extraction.
机译:预测链接的出现是网络中的一个基本问题。在链路预测问题中,我们获得了网络的快照,并想推断现有成员之间的哪些交互很可能在不久的将来发生,或者我们缺少哪些现有的交互。尽管已经对该问题进行了广泛的研究,但是如何有效地将网络结构中的信息与丰富的节点和边缘属性数据进行有效组合仍然面临着很大的挑战。具有节点和边缘级别属性。我们通过使用这些属性来指导图形上的随机游走来实现。我们制定了一个有监督的学习任务,其目的是学习一种功能,该功能为网络的边缘分配强度,以使随机步行者更有可能访问将来将要创建新链接的节点。我们开发了一种有效的训练算法来直接学习边缘强度估计功能。我们在Facebook社交图和大型协作网络上进行的实验表明,我们的方法优于最新的无监督方法以及基于特征提取的方法。

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