Towards Transformer Fusions for Chinese Sentiment Intensity Prediction in Valence-Arousal Dimensions

Yu-Chih Deng, Yih-Ru Wang, Sin-Horng Chen, Lung-Hao Lee*.
IEEE Access, 11, pages 109974-109982.


BERT (Bidirectional Encoder Representations from Transformers) uses an encoder architecture with an attention mechanism to construct a transformer-based neural network. In this study, we develop a Chinese word-level BERT to learn contextual language representations and propose a transformer fusion framework for Chinese sentiment intensity prediction in the valence-arousal dimensions. Experimental results on the Chinese EmoBank indicate that our transformer-based fusion model outperforms other neural- network-based, regression-based and lexicon-based methods, reflecting the effectiveness of integrating semantic representations in different degrees of linguistic granularity. Our proposed transformer fusion framework is also simple and easy to fine-tune over different downstream tasks.