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A Survey on Temporal Link Prediction
PhD Qualifying Examination Title: "A Survey on Temporal Link Prediction" by Mr. Meng QIN Abstract: For various complex systems, dynamic graph serves as a generic abstraction and description of their evolutionary behaviors. Temporal link prediction (TLP) is a classic inference task on dynamic graphs, which aims to predict possible future linkage using the historical dynamic topology. The predicted future topology can be further used to support some advanced applications on real-world systems for better performance. This survey provides a comprehensive review of existing representative TLP methods. Concretely, we first give the formal statements regarding the data models, task settings, and learning paradigms used in related approaches. A hierarchical taxonomy is further introduced to categorize existing TLP methods in terms of their data models, learning paradigms, and techniques. From a generic perspective, we use a unified encoder-decoder framework to formulate all the methods reviewed in this survey, where each method can be described by an encoder, a decoder, and a loss function. To conclude this survey, we also summarize some advanced topics in recent research and highlight possible future directions. Date: Friday, 24 June 2022 Time: 10:00am - 12:00noon Zoom Meeting: https://hkust.zoom.us/j/95877658018?pwd=aWlpeHI1UHhQMmNmVVBXTEtocW1wUT09 Committee Members: Prof. Dit-Yan Yeung (Supervisor) Dr. Yangqiu Song (Chairperson) Prof. Raymond Wong Prof. Tong Zhang Prof. Xiaofang Zhou **** ALL are Welcome ****