Abstract
Previous studies show effective of pre-trained language models for sentiment analysis. However, most of these studies ignore the importance of sentimental information for pre-trained models. Therefore, we fully investigate the sentimental information for pre-trained models and enhance pre-trained language models with semantic graphs for sentiment analysis. In particular, we introduce Semantic Graphs based Pre-training(SGPT) using semantic graphs to obtain synonym knowledge for aspect-sentiment pairs and similar aspect/sentiment terms. We then optimize the pre-trained language model with the semantic graphs. Empirical studies on several downstream tasks show that proposed model outperforms strong pre-trained baselines. The results also show the effectiveness of proposed semantic graphs for pre-trained model.
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Yong, Q., Chen, C., Wang, Z., Xiao, R., & Tang, H. (2023). SGPT: Semantic graphs based pre-training for aspect-based sentiment analysis. World Wide Web, 26(4), 2201–2214. https://doi.org/10.1007/s11280-022-01123-1
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