Sentiment-Aware Word and Sentence Level Pre-training for Sentiment Analysis

  • Shuai Fan ,
  • Chen Lin ,
  • Haonan Li ,
  • Zhenghao Lin ,
  • Jinsong Su ,
  • Hang Zhang ,
  • ,
  • Jian Guo ,
  • Nan Duan

EMNLP 2022 |

Most existing pre-trained language representation models (PLMs) are sub-optimal in sentiment analysis tasks, as they capture the sentiment information from word-level while under-considering sentence-level information. In this paper, we propose SentiWSP, a novel Sentiment-aware pre-trained language model with combined Word-level and Sentence-level Pre-training tasks. The word level pre-training task detects replaced sentiment words, via a generator-discriminator framework, to enhance the PLM’s knowledge about sentiment words. The sentence level pre-training task further strengthens the discriminator via a contrastive learning framework, with similar sentences as negative samples, to encode sentiments in a sentence. Extensive experimental results show that SentiWSP achieves new state-of-the-art performance on various sentence-level and aspect-level sentiment classification benchmarks. We have made our code and model publicly available at this https URL.