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A Survey on Representation Learning for Graph Reasoning
PhD Qualifying Examination Title: "A Survey on Representation Learning for Graph Reasoning" by Mr. Xin LIU Abstract: Embedding graphs into continuous vector spaces is a focus of current research. Mining valuable hidden information from such spaces relies on the support of reasoning technology. Representation learning for homogeneous graphs mainly aims to capture the information of topology and geometry. Reasoning over heterogeneous graphs is more challenging. Inspired by distributed embeddings for homogeneous graphs, the derivation of basic operations and neural networks for heterogeneous is also under development. Knowledge graphs, providing well-structured relational information between entities, have gained much attention in artificial intelligence. Reasoning over them is also important because it can not only infer new facts from existing data but provide interpretations for downstream tasks. In this survey, we introduce the basic concept and definitions of graph reasoning and the research work for embedding methods for reasoning over graphs. Specifically, we dissect the reasoning methods into two categories: shallow representation-based, and graph convolution-based reasoning. Finally, we summarize real-world applications of graph reasoning, such as knowledge graph completion, question answering, semantic segmentation, and so on. Date: Tuesday, 11 August 2020 Time: 2:00pm - 4:00pm Zoom Meeting: https://hkust.zoom.us/j/99100964120 Committee Members: Dr. Yangqiu Song (Supervisor) Prof. Nevin Zhang (Chairperson) Dr. Qiong Luo Prof. Dit-Yan Yeung **** ALL are Welcome ****