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Cross-Network Skip-Gram Embedding for Joint Network Alignment and Link Prediction

Du, Xingbo; Yan, Junchi*; Zhang, Rui; Zha, Hongyuan
Science Citation Index Expanded
上海交通大学; 中国科学院

摘要

Link prediction and network alignment are two fundamental and interleaved tasks in network analysis. In this paper, we propose a novel cross-network embedding model under the Skip-gram framework, which alternately performs link prediction and network alignment by joint optimization. Vertex sequences, obtained via a biased random walk based on empirical mixture distributions, are used to train a Skip-gram based node embedding model. On one hand, based on the similarity in embedding space, network alignment can be effectively performed either with the initial ground truth alignments as seeds or from scratch. On the other hand, the proposed link prediction model involves training a supervised classifier by sampling a set of positive and negative edges. We also modify and incorporate the Collective Link Fusion (CLF) method under a Skip-gram framework and show that the new method can achieve better results in both tasks. Extensive experimental results show the state-of-the-art performance of our methods.

关键词

Task analysis Predictive models Social network services Peer-to-peer computing Optimization Computational modeling Computer science Link prediction network alignment cross-network embedding skip-gram biased random walk