Exploiting BERT for End-to-End Aspect-based Sentiment Analysis
This provides a standardized BERT-based benchmark for E2E-ABSA, addressing a gap in comparative studies for researchers in natural language processing.
The paper tackled the End-to-End Aspect-based Sentiment Analysis (E2E-ABSA) task by leveraging BERT's contextualized embeddings with simple neural baselines, achieving state-of-the-art performance even with a linear classification layer.
In this paper, we investigate the modeling power of contextualized embeddings from pre-trained language models, e.g. BERT, on the E2E-ABSA task. Specifically, we build a series of simple yet insightful neural baselines to deal with E2E-ABSA. The experimental results show that even with a simple linear classification layer, our BERT-based architecture can outperform state-of-the-art works. Besides, we also standardize the comparative study by consistently utilizing a hold-out validation dataset for model selection, which is largely ignored by previous works. Therefore, our work can serve as a BERT-based benchmark for E2E-ABSA.