We investigate efficient learning from higher-order graph convolution and learning directly from adjacency matrices for node classification. We revisit the scaled graph residual network and remove ReLU activation from residual layers and apply a single weight matrix at each residual layer. We show that the resulting model lead to new graph convolution models as a polynomial of the normalized adjacency matrix, the residual weight matrix, and the residual scaling parameter. Additionally, we propose adaptive learning between directly graph polynomial convolution models and learning directly from the adjacency matrix. Furthermore, we propose fully adaptive models to learn scaling parameters at each residual layer. We show that generalization bounds of proposed methods are bounded as a polynomial of eigenvalue spectrum, scaling parameters, and upper bounds of residual weights. By theoretical analysis, we argue that the proposed models can obtain improved generalization bounds by limiting the higher-orders of convolutions and direct learning from the adjacency matrix. Using a wide set of real-data, we demonstrate that the proposed methods obtain improved accuracy for node-classification of non-homophilous graphs.
翻译:我们调查从高阶图形相融合中有效学习,直接从相邻矩阵中学习节点分类;我们重新研究平面图残余网络,从残余层中去除RELU的激活,并在每个残余层中应用单一重量矩阵;我们显示,所产生的模型导致新的图形相融合模型,作为共和对接矩阵、剩余重量矩阵和剩余缩放参数的多元组合体;此外,我们提议在直接图形多面相融合模型和直接从相邻矩阵中学习之间进行适应性学习;此外,我们提出完全适应性模型,以学习每个剩余层的缩放参数;我们表明,拟议方法的概括性界限被捆绑成一个双元值频谱、缩放参数和剩余重量的上限。我们通过理论分析认为,拟议的模型可以通过限制较高级的相融合顺序和直接从相亲关系矩阵中学习而获得改进的概括性界限。我们用一套广泛的真实数据表明,拟议的方法在非爆炸性图表的节化中提高了准确性。