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Papers/Learning Convolutional Neural Networks for Graphs

Learning Convolutional Neural Networks for Graphs

Mathias Niepert, Mohamed Ahmed, Konstantin Kutzkov

2016-05-17Graph Classification
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Abstract

Numerous important problems can be framed as learning from graph data. We propose a framework for learning convolutional neural networks for arbitrary graphs. These graphs may be undirected, directed, and with both discrete and continuous node and edge attributes. Analogous to image-based convolutional networks that operate on locally connected regions of the input, we present a general approach to extracting locally connected regions from graphs. Using established benchmark data sets, we demonstrate that the learned feature representations are competitive with state of the art graph kernels and that their computation is highly efficient.

Results

TaskDatasetMetricValueModel
Graph ClassificationCOX2Accuracy(10-fold)75.21PSCN
ClassificationCOX2Accuracy(10-fold)75.21PSCN

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