Exploiting longer cycles for link prediction in signed networks

Kai-Yang Chiang, Nagarajan Natarajan, Ambuj Tewari, I. Dhillon
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引用次数: 160

Abstract

We consider the problem of link prediction in signed networks. Such networks arise on the web in a variety of ways when users can implicitly or explicitly tag their relationship with other users as positive or negative. The signed links thus created reflect social attitudes of the users towards each other in terms of friendship or trust. Our first contribution is to show how any quantitative measure of social imbalance in a network can be used to derive a link prediction algorithm. Our framework allows us to reinterpret some existing algorithms as well as derive new ones. Second, we extend the approach of Leskovec et al. (2010) by presenting a supervised machine learning based link prediction method that uses features derived from longer cycles in the network. The supervised method outperforms all previous approaches on 3 networks drawn from sources such as Epinions, Slashdot and Wikipedia. The supervised approach easily scales to these networks, the largest of which has 132k nodes and 841k edges. Most real-world networks have an overwhelmingly large proportion of positive edges and it is therefore easy to get a high overall accuracy at the cost of a high false positive rate. We see that our supervised method not only achieves good accuracy for sign prediction but is also especially effective in lowering the false positive rate.
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在签名网络中利用更长的周期进行链路预测
研究了签名网络中的链路预测问题。当用户可以隐式或显式地将他们与其他用户的关系标记为积极或消极时,这种网络以各种方式出现在网络上。由此创建的签名链接反映了用户在友谊或信任方面对彼此的社会态度。我们的第一个贡献是展示了如何使用网络中社会不平衡的任何定量测量来推导链接预测算法。我们的框架允许我们重新解释一些现有的算法,并派生出新的算法。其次,我们扩展了Leskovec等人(2010)的方法,提出了一种基于监督机器学习的链接预测方法,该方法使用了来自网络中较长周期的特征。在Epinions, Slashdot和Wikipedia等来源的3个网络上,监督方法优于之前的所有方法。监督方法很容易扩展到这些网络,其中最大的网络有132k个节点和841k条边。大多数现实世界的网络都有绝大多数的正边,因此很容易以高误报率为代价获得高的整体精度。我们发现,我们的监督方法不仅在符号预测方面取得了很好的准确性,而且在降低误报率方面也特别有效。
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