Fisher-Bures Adversary Graph Convolutional Networks
Abstract
In a graph convolutional network, we assume that the graph G is generated wrt some observation noise. During learning, we make small random perturbations G of the graph and try to improve generalization. Based on quantum information geometry, G can be characterized by the eigendecomposition of the graph Laplacian matrix. We try to minimize the loss wrt the perturbed G+G while making G to be effective in terms of the Fisher information of the neural network. Our proposed model can consistently improve graph convolutional networks on semi-supervised node classification tasks with reasonable computational overhead. We present three different geometries on the manifold of graphs: the intrinsic geometry measures the information theoretic dynamics of a graph; the extrinsic geometry characterizes how such dynamics can affect externally a graph neural network; the embedding geometry is for measuring node embeddings. These new analytical tools are useful in developing a good understanding of graph neural networks and fostering new techniques.
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