Link Prediction in Dynamic Social Networks Combining Entropy, Causality, and a Graph Convolutional Network Model
Xiaoli Huang,
Jingyu Li,
Yumiao Yuan
Abstract:Link prediction is recognized as a crucial means to analyze dynamic social networks, revealing the principles of social relationship evolution. However, the complex topology and temporal evolution characteristics of dynamic social networks pose significant research challenges. This study introduces an innovative fusion framework that incorporates entropy, causality, and a GCN model, focusing specifically on link prediction in dynamic social networks. Firstly, the framework preprocesses the raw data, extracting… Show more
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