A Parameterized Probabilistic Model of Network Evolution for Supervised Link Prediction

H. Kashima, N. Abe
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引用次数: 147

Abstract

We introduce a new approach to the problem of link prediction for network structured domains, such as the Web, social networks, and biological networks. Our approach is based on the topological features of network structures, not on the node features. We present a novel parameterized probabilistic model of network evolution and derive an efficient incremental learning algorithm for such models, which is then used to predict links among the nodes. We show some promising experimental results using biological network data sets.
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一种用于监督链路预测的网络演化参数化概率模型
我们介绍了一种新的方法来解决网络结构化领域的链接预测问题,如Web、社交网络和生物网络。我们的方法是基于网络结构的拓扑特征,而不是基于节点特征。我们提出了一种新的网络演化的参数化概率模型,并推导了一种有效的增量学习算法,然后用于预测节点之间的链接。我们使用生物网络数据集展示了一些有希望的实验结果。
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