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Gaussian-Induced Convolution for Graphs

About

Learning representation on graph plays a crucial role in numerous tasks of pattern recognition. Different from grid-shaped images/videos, on which local convolution kernels can be lattices, however, graphs are fully coordinate-free on vertices and edges. In this work, we propose a Gaussian-induced convolution (GIC) framework to conduct local convolution filtering on irregular graphs. Specifically, an edge-induced Gaussian mixture model is designed to encode variations of subgraph region by integrating edge information into weighted Gaussian models, each of which implicitly characterizes one component of subgraph variations. In order to coarsen a graph, we derive a vertex-induced Gaussian mixture model to cluster vertices dynamically according to the connection of edges, which is approximately equivalent to the weighted graph cut. We conduct our multi-layer graph convolution network on several public datasets of graph classification. The extensive experiments demonstrate that our GIC is effective and can achieve the state-of-the-art results.

Jiatao Jiang, Zhen Cui, Chunyan Xu, Jian Yang• 2018

Related benchmarks

TaskDatasetResultRank
Graph ClassificationPROTEINS
Accuracy77.65
1252
Graph ClassificationMUTAG
Accuracy94.44
1103
Graph ClassificationNCI1
Accuracy84.08
658
Graph ClassificationCOLLAB
Accuracy81.24
469
Graph ClassificationIMDB-B
Accuracy76.7
425
Graph ClassificationENZYMES
Accuracy62.5
328
Graph ClassificationNCI109
Accuracy82.86
267
Node ClassificationREDDIT--
216
Graph ClassificationPTC
Accuracy77.64
167
Graph ClassificationIMDB MULTI
Accuracy51.66
139
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