Abstract
In the past few years, semi-supervised node classi-
fication in attributed network has been developed
rapidly. Inspired by the success of deep learning, researchers adopt the convolutional neural network to develop the Graph Convolutional Networks
(GCN), and they have achieved surprising classifi-
cation accuracy by considering the topological information and employing the fully connected network (FCN). However, the given network topology may also induce a performance degradation if
it is directly employed in classification, because it
may possess high sparsity and certain noises. Besides, the lack of learnable filters in GCN also limits the performance. In this paper, we propose a
novel Topology Optimization based Graph Convolutional Networks (TO-GCN) to fully utilize the
potential information by jointly refining the network topology and learning the parameters of the
FCN. According to our derivations, TO-GCN is
more flexible than GCN, in which the filters are
fixed and only the classifier can be updated during
the learning process. Extensive experiments on real
attributed networks demonstrate the superiority of
the proposed TO-GCN against the state-of-the-art
approaches