Graph convolutional networks with bidirectional attention for aspect-based sentiment classification

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Abstract

Aspect-based sentiment classification aims at determining the corresponding sentiment of a particular aspect. Many sophisticated approaches, such as attention mechanisms and Graph Convolutional Networks, have been widely used to address this challenge. However, most of the previous methods have not well analyzed the role of words and long-distance dependencies, and the interaction between context and aspect terms is not well realized, which greatly limits the effectiveness of the model. In this paper, we propose an effective and novel method using attention mechanism and graph convolutional network (ATGCN). Firstly, we make full use of multi-head attention and point-wise convolution transformation to obtain the hidden state. Secondly, we introduce position coding in the model, and use Graph Convolutional Networks to obtain syntactic information and long-distance dependencies. Finally, the interaction between context and aspect terms is further realized by bidirectional attention. Experiments on three benchmarking collections indicate the effectiveness of ATGCN.

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Liu, J., Liu, P., Zhu, Z., Li, X., & Xu, G. (2021). Graph convolutional networks with bidirectional attention for aspect-based sentiment classification. Applied Sciences (Switzerland), 11(4), 1–15. https://doi.org/10.3390/app11041528

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