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Generalizing Graph Neural Networks Across Graphs, Time, And Tasks, Zhihao Wen
Generalizing Graph Neural Networks Across Graphs, Time, And Tasks, Zhihao Wen
Dissertations and Theses Collection (Open Access)
Graph-structured data are ubiquitous across numerous real-world contexts, encompassing social networks, commercial graphs, bibliographic networks, and biological systems. Delving into the analysis of these graphs can yield significant understanding pertaining to their corresponding application fields.Graph representation learning offers a potent solution to graph analytics challenges by transforming a graph into a low-dimensional space while preserving its information to the greatest extent possible. This conversion into low-dimensional vectors enables the efficient computation of subsequent graph algorithms. The majority of prior research has concentrated on deriving node representations from a single, static graph. However, numerous real-world situations demand rapid generation of representations …