Representation Learning for Graph-Structured Data
user-613ea93de55422cecdace10f(2021)
摘要
Graph-structured data is ubiquitous in science, engineering and has been successfully used in various real-life applications for social networks, molecular graphs, and biological networks. Hence, it is worth exploring prospective mechanisms to deal with the unprecedented growth in volumes and problem complexity of graph-structured data. Graph representation learning has recently emerged as a new promising paradigm, which learns a parametric mapping function that embeds nodes, subgraphs, or the entire graph into low-dimensional continuous vectors. In this thesis, we focus on developing novel and advanced graph embedding models for the two most popular types of graphs: undirected graph and knowledge graph.
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关键词
Graph (abstract data type),Graph embedding,Feature learning,Biological network,Theoretical computer science,Function (engineering),Computer science,Parametric statistics,Focus (optics),Quaternion
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