ACL2021
Multi-hop Graph Convolutional Network with High-order Chebyshev Approximation for Text Reasoning
Shuoran Jiang, Qingcai Chen, Xin Liu, Baotian Hu, Lisai Zhang
Abstract
Graph convolutional network (GCN) has become popular in various natural language processing (NLP) tasks with its superiority in longterm and non-consecutive word interactions. However, existing single-hop graph reasoning in GCN may miss some important nonconsecutive dependencies. In this study, we define the spectral graph convolutional network with the high-order dynamic Chebyshev approximation (HDGCN), which augments the multi-hop graph reasoning by fusing messages aggregated from direct and long-term dependencies into one convolutional layer. To alleviate the over-smoothing in high-order Chebyshev approximation, a multi-vote based crossattention (MVCAttn) with linear computation complexity is also proposed. The empirical results on four transductive and inductive NLP tasks and the ablation study verify the efficacy of the proposed model. Our source code is available at https://github.com/ MathIsAll/HDGCN-pytorch .