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A Hybrid Semantics and Syntax-Based Graph Convolutional Network for Aspect-Level Sentiment Classification

Huang, Chen; Li, Xianyong; Du, Yajun; Dong, Zhicheng; Huang, Dong; Kumar Jain, Deepak; Hussain, Amir

Authors

Chen Huang

Xianyong Li

Yajun Du

Zhicheng Dong

Dong Huang

Deepak Kumar Jain



Abstract

Aspect-level sentiment classification seeks to ascertain the sentiment polarities of individual aspects within a sentence. Most existing research in this field focuses on individually assessing the importance of contexts on individual aspects, disregarding the negative impact of imbalanced relations between aspects due to their mutual influence. This paper presents a hybrid semantics and syntax-based graph convolutional network (SS-GCN) for aspect-level sentiment classification. This model addresses the imbalanced limitation by creating aspects-based balance relations between the strengths and weaknesses of different aspects through an auxiliary task. Furthermore, the multi-head self-attention mechanism utilizes position-enhanced encoding to identify the most relevant aspects of the current word. Extensive experiments demonstrate that SS-GCN outperforms other baselines in terms of classification performance. Compared to state-of-the-art methods, SS-GCN significantly improves 0.39–1.66% in accuracy and 0.43–1.92% in Macro-F1 on the SemEval 14-15 and MAMS datasets.

Citation

Huang, C., Li, X., Du, Y., Dong, Z., Huang, D., Kumar Jain, D., & Hussain, A. (2025). A Hybrid Semantics and Syntax-Based Graph Convolutional Network for Aspect-Level Sentiment Classification. Cognitive Computation, 17(1), Article 16. https://doi.org/10.1007/s12559-024-10367-0

Journal Article Type Article
Acceptance Date Oct 21, 2024
Online Publication Date Nov 29, 2024
Publication Date 2025-02
Deposit Date Jan 15, 2025
Journal Cognitive Computation
Print ISSN 1866-9956
Electronic ISSN 1866-9964
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 17
Issue 1
Article Number 16
DOI https://doi.org/10.1007/s12559-024-10367-0