Implicit sentiment analysis is a challenging task because the sentiment of a text is expressed in a connotative manner. To tackle this problem, we propose to use textual events as a knowledge source to enrich network representations. To consider task interactions, we present a novel lightweight joint learning paradigm that can pass task-related messages between tasks during training iterations. This is distinct from previous methods that involve multi-task learning by simple parameter sharing. Besides, a human-annotated corpus with implicit sentiment labels and event labels is scarce, which hinders practical applications of deep neural models. Therefore, we further investigate a back-translation approach to expand training instances. Experiment results on a public benchmark demonstrate the effectiveness of both the proposed multi-task architecture and data augmentation strategy.
A message-passing multi-task architecture for the implicit event and polarity detection.
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作者:Xiang Chunli, Zhang Junchi, Ji Donghong
| 期刊: | PLoS One | 影响因子: | 2.600 |
| 时间: | 2021 | 起止号: | 2021 Mar 1; 16(3):e0247704 |
| doi: | 10.1371/journal.pone.0247704 | ||
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