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MOTIFNET: A MOTIF-BASED GRAPH CONVOLUTIONAL NETWORK FOR DIRECTED GRAPHS

机译:Motifnet:基于主题的图形卷积网络,用于定向图

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Deep learning on graphs and in particular, graph convolutional neural networks, have recently attracted significant attention in the machine learning community. Many of such techniques explore the analogy between the graph Laplacian eigenvectors and the classical Fourier basis, allowing to formulate the convolution as a multiplication in the spectral domain. One of the key drawback of spectral CNNs is their explicit assumption of an undirected graph, leading to a symmetric Laplacian matrix with orthogonal eigendecomposition. In this work we propose MotifNet, a graph CNN capable of dealing with directed graphs by exploiting local graph motifs. We present experimental evidence showing the advantage of our approach on real data.
机译:在图表中深入学习,特别是图形卷积神经网络,最近在机器学习界中引起了重大关注。许多这样的技术探讨了图形拉普拉斯特征向量和经典傅立叶之间的类比,允许将卷积标准为频谱域中的乘法。光谱CNN的关键缺点之一是它们的明确假设无向图,导致具有正交eigEndeconomposition的对称Laplacian矩阵。在这项工作中,我们提出了Motifnet,是一种能够通过利用本地图案主题来处理有针对性的图形的图表CNN。我们提出了实验证据,显示了我们对实际数据的方法的优势。

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