Generative Aspect-Based Sentiment Analysis with Contrastive Learning and Expressive Structure
This work addresses a specific challenge in natural language processing for sentiment analysis, offering incremental improvements for tasks like online review analysis.
The paper tackles the problem of extracting Aspect-Category-Opinion-Sentiment quadruples in aspect-based sentiment analysis, particularly for implicit sentiment expressions in online reviews, and achieves a 1.48% average F1 improvement across datasets with significant gains on challenging implicit splits.
Generative models have demonstrated impressive results on Aspect-based Sentiment Analysis (ABSA) tasks, particularly for the emerging task of extracting Aspect-Category-Opinion-Sentiment (ACOS) quadruples. However, these models struggle with implicit sentiment expressions, which are commonly observed in opinionated content such as online reviews. In this work, we introduce GEN-SCL-NAT, which consists of two techniques for improved structured generation for ACOS quadruple extraction. First, we propose GEN-SCL, a supervised contrastive learning objective that aids quadruple prediction by encouraging the model to produce input representations that are discriminable across key input attributes, such as sentiment polarity and the existence of implicit opinions and aspects. Second, we introduce GEN-NAT, a new structured generation format that better adapts autoregressive encoder-decoder models to extract quadruples in a generative fashion. Experimental results show that GEN-SCL-NAT achieves top performance across three ACOS datasets, averaging 1.48% F1 improvement, with a maximum 1.73% increase on the LAPTOP-L1 dataset. Additionally, we see significant gains on implicit aspect and opinion splits that have been shown as challenging for existing ACOS approaches.