Aspect Sentiment Triplet Extraction (ASTE) is a new fine-grained sentiment analysis task that aims to extract triplets of aspect terms, sentiments, and opinion terms from review sentences. Recently, span-level models achieve gratifying results on ASTE task by taking advantage of whole span predictions. However, all the spans generated by these methods inevitably share at least one token with some others, and these method suffer from the similarity of these spans due to their similar distributions. Moreover, since either the aspect term or opinion term can trigger a sentiment triplet, it is challenging to make use of the information more comprehensively and adequately. To address these concerns, we propose a span-level bidirectional cross-attention framework. Specifically, we design a similar span separation loss to detach the spans with shared tokens and a bidirectional cross-attention structure that consists of aspect and opinion decoders to decode the span-level representations in both aspect-to-opinion and opinion-to-aspect directions. With differentiated span representations and bidirectional decoding structure, our model can extract sentiment triplets more precisely and efficiently. Experimental results show that our framework significantly outperforms state-of-the-art methods, achieving better performance in predicting triplets with multi-token entities and extracting triplets in sentences with multi-triplets.
翻译:纵观感知三线(ASTE)是一个新的微小情感分析任务,旨在从审查判决中提取三重内容、情绪和观点术语。最近,跨层次模型通过利用整个全范围的预测,在亚斯特任务上取得了令人满意的结果。然而,这些方法产生的所有跨度必然与其他一些方法至少共享一个象征,这些方法由于分布相似,因而具有相似性。此外,由于内容术语或观点术语可以触发情绪三重,因此,更全面和充分地利用这些信息具有挑战性。为了解决这些关切,我们提议一个跨层次双向交叉注意框架。具体地说,我们设计了类似的跨层次分离损失,以用共同象征和双向交叉注意结构拆分这一跨度,这一结构由方和意见解码组成,以解析跨层次分布在从方面到观点到层面的分布方向,因此,更全面和充分地利用双向分向分解的信息。我们模型的三重方向结构可以提取出跨层次双向双向双向跨方向的跨方向的双向交叉注意框架。我们模型的三边的三边结构可以精确地显示我们高层次的三方面和多向预测结果。