We propose a symmetric graph convolutional autoencoder which produces a low-dimensional latent representation from a graph. In contrast to the existing graph autoencoders with asymmetric decoder parts, the proposed autoencoder has a newly designed decoder which builds a completely symmetric autoencoder form. For the reconstruction of node features, the decoder is designed based on Laplacian sharpening as the counterpart of Laplacian smoothing of the encoder, which allows utilizing the graph structure in the whole processes of the proposed autoencoder architecture. In order to prevent the numerical instability of the network caused by the Laplacian sharpening introduction, we further propose a new numerically stable form of the Laplacian sharpening by incorporating the signed graphs. In addition, a new cost function which finds a latent representation and a latent affinity matrix simultaneously is devised to boost the performance of image clustering tasks. The experimental results on clustering, link prediction and visualization tasks strongly support that the proposed model is stable and outperforms various state-of-the-art algorithms.
翻译:我们从图表中提出一个对称图形相控自动解码器,从中产生低维潜值代表。与现有的图形自动解码器相比,拟议的自动解码器有一个新设计的解码器,以构建一个完全对称自动解码器形式。为了重建节点特征,解码器的设计依据是:拉普拉西亚磨亮,作为整流编码器滑动的拉普拉西平滑的对等方,从而可以在拟议的自动解码器结构的整个过程中使用图形结构。为了防止由于拉普拉西亚加亮化而导致的网络数字不稳定,我们进一步建议采用一种新的数字稳定化的拉普拉西亚磨亮形式,通过整合签名的图形。此外,还设计了一个新的成本功能,即同时找到潜在代表器和潜在亲近矩阵,以提升图像组合任务的性。关于集成、链接预测和可视化任务的实验结果有力地证明,拟议的模型是稳定的,超越了各种状态的算法。