Authors
Yunsheng Bai, Hao Ding, Song Bian, Ting Chen, Yizhou Sun, Wei Wang
Publication date
2019/1/30
Conference
Proceedings of the Twelfth ACM International Conference on Web Search and Data Mining
Pages
384-392
Publisher
ACM
Description
Graph similarity search is among the most important graph-based applications, e.g. finding the chemical compounds that are most similar to a query compound. Graph similarity/distance computation, such as Graph Edit Distance (GED) and Maximum Common Subgraph (MCS), is the core operation of graph similarity search and many other applications, but very costly to compute in practice. Inspired by the recent success of neural network approaches to several graph applications, such as node or graph classification, we propose a novel neural network based approach to address this classic yet challenging graph problem, aiming to alleviate the computational burden while preserving a good performance. The proposed approach, called SimGNN, combines two strategies. First, we design a learnable embedding function that maps every graph into an embedding vector, which provides a global summary of a graph …
Total citations
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Scholar articles
Y Bai, H Ding, S Bian, T Chen, Y Sun, W Wang - Proceedings of the twelfth ACM international …, 2019