资源论文Unsupervised Inductive Graph-Level Representation Learning via Graph-Graph Proximity

Unsupervised Inductive Graph-Level Representation Learning via Graph-Graph Proximity

2019-09-30 | |  84 |   50 |   0

Abstract We introduce a novel approach to graph-level representation learning, which is to embed an entire graph into a vector space where the embeddings of two graphs preserve their graph-graph proximity. Our approach, UGRAPHEMB, is a general framework that provides a novel means to performing graph-level embedding in a completely unsupervised and inductive manner. The learned neural network can be considered as a function that receives any graph as input, either seen or unseen in the training set, and transforms it into an embedding. A novel graph-level embedding generation mechanism called Multi-Scale Node Attention (MSNA), is proposed. Experiments on fifive real graph datasets show that UGRAPHEMB achieves competitive accuracy in the tasks of graph classifification, similarity ranking, and graph visualization

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