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Deep Context- and Relation-Aware Learning for Aspect-based Sentiment Analysis

机译:基于方面的情感分析的深层背景和关系感知学习

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Existing works for aspect-based sentiment analysis (ABSA) have adopted a unified approach, which allows the interactive relations among subtasks. However, we observe that these methods tend to predict polarities based on the literal meaning of aspect and opinion terms and mainly consider relations implicitly among subtasks at the word level. In addition, identifying multiple aspect-opinion pairs with their polarities is much more challenging. Therefore, a comprehensive understanding of contextual information w.r.t. the aspect and opinion are further required in ABSA. In this paper, we propose Deep Contextualized Relation-Aware Network (DCRAN), which allows interactive relations among subtasks with deep contextual information based on two modules (i.e., Aspect and Opinion Propagation and Explicit Self-Supervised Strategies). Especially, we design novel self-supervised strategies for ABSA, which have strengths in dealing with multiple aspects. Experimental results show that DCRAN significantly outperforms previous state-of-the-art methods by large margins on three widely used benchmarks.
机译:基于方面的情感分析(ABSA)的现有工作采用了统一的方法,允许子组织之间的互动关系。然而,我们观察到,这些方法倾向于基于方面和意见术语的字面意义来预测极性,主要考虑单词级别的子组织之间隐含的关系。此外,识别具有它们极性的多个方向性对对进行更具挑战性。因此,全面了解上下文信息w.r.t.在ABSA中需要进一步要求方面和意见。在本文中,我们提出了深刻的语境化关系感知网络(DCRAN),它允许基于两个模块的深层上下文信息之间的子组织之间的交互关系(即,方面和意见传播和明确的自我监督策略)。特别是,我们设计专业的新型自我监督战略,具有处理多个方面的优势。实验结果表明,在三个广泛使用的基准中,DCRAN明显优于先前的最先进的方法。

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