Spectral graph convolutional network (SGCN) is a kind of graph neural
networks (GNN) based on graph signal filters, and has shown compelling
expressivity for modeling graph-structured data. Most SGCNs adopt polynomial
filters and learn the coefficients from the training data. Many of them focus
on which polynomial basis leads to optimal expressive power and models'
architecture is little discussed. In this paper, we propose a general form in
terms of spectral graph convolution, where the coefficients of polynomial basis
are stored in a third-order tensor. Then, we show that the convolution block in
existing SGCNs can be derived by performing a certain coefficient decomposition
operation on the coefficient tensor. Based on the generalized view, we develop
novel spectral graph convolutions CoDeSGC-CP and -Tucker by tensor
decomposition CP and Tucker on the coefficient tensor. Extensive experimental
results demonstrate that the proposed convolutions achieve favorable
performance improvements