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A Joint Training Dual-MRC Framework for Aspect Based Sentiment Analysis
Yue Mao; Yi Shen; Chao Yu; Longjun Cai

Abstract
Aspect based sentiment analysis (ABSA) involves three fundamental subtasks: aspect term extraction, opinion term extraction, and aspect-level sentiment classification. Early works only focused on solving one of these subtasks individually. Some recent work focused on solving a combination of two subtasks, e.g., extracting aspect terms along with sentiment polarities or extracting the aspect and opinion terms pair-wisely. More recently, the triple extraction task has been proposed, i.e., extracting the (aspect term, opinion term, sentiment polarity) triples from a sentence. However, previous approaches fail to solve all subtasks in a unified end-to-end framework. In this paper, we propose a complete solution for ABSA. We construct two machine reading comprehension (MRC) problems and solve all subtasks by joint training two BERT-MRC models with parameters sharing. We conduct experiments on these subtasks, and results on several benchmark datasets demonstrate the effectiveness of our proposed framework, which significantly outperforms existing state-of-the-art methods.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| aspect-oriented-opinion-extraction-on-semeval | Dual-MRC | Laptop 2014 (F1): 79.90 Restaurant 2014 (F1): 83.73 Restaurant 2015 (F1): 74.50 Restaurant 2016 (F1): 83.33 |
| aspect-sentiment-triplet-extraction-on | Dual-MRC | F1: 70.32 |
| aspect-term-extraction-and-sentiment | Dual-MRC | Avg F1: 68.99 Laptop 2014 (F1): 65.94 Restaurant 2014 (F1): 75.95 Restaurant 2015 (F1): 65.08 |
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