论文标题
签名的图形神经网络:频率视角
Signed Graph Neural Networks: A Frequency Perspective
论文作者
论文摘要
图形卷积网络(GCN)及其变体是为仅包含正链的无签名图设计的。许多现有的GCN源自位于(未签名)图的信号的光谱域分析,在每个卷积层中,它们对输入特征进行低通滤波,然后进行可学习的线性转换。它们扩展到具有正面和负面链接的签名图,引发了多个问题,包括计算不规则性和模棱两可的频率解释,从而使计算高效的低通滤波器的设计具有挑战性。在本文中,我们通过签名图的光谱分析来解决这些问题,并提出了两个不同的图形神经网络,一个人仅保留低频信息,并且还保留了高频信息。我们进一步引入了磁性签名的拉普拉斯式,并使用其特征分类进行定向签名图的光谱分析。我们在签名图上测试了节点分类的方法,并链接符号预测任务并实现最新性能。
Graph convolutional networks (GCNs) and its variants are designed for unsigned graphs containing only positive links. Many existing GCNs have been derived from the spectral domain analysis of signals lying over (unsigned) graphs and in each convolution layer they perform low-pass filtering of the input features followed by a learnable linear transformation. Their extension to signed graphs with positive as well as negative links imposes multiple issues including computational irregularities and ambiguous frequency interpretation, making the design of computationally efficient low pass filters challenging. In this paper, we address these issues via spectral analysis of signed graphs and propose two different signed graph neural networks, one keeps only low-frequency information and one also retains high-frequency information. We further introduce magnetic signed Laplacian and use its eigendecomposition for spectral analysis of directed signed graphs. We test our methods for node classification and link sign prediction tasks on signed graphs and achieve state-of-the-art performances.