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A Position-aware Bidirectional Attention Network for Aspect-level Sentiment Analysis

机译:面向方面的情感分析的位置感知双向注意力网络

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Aspect-level sentiment analysis aims to distinguish the sentiment polarity of each specific aspect term in a given sentence. Both industry and academia have realized the importance of the relationship between aspect term and sentence, and made attempts to model the relationship by designing a series of attention models. However, most existing methods usually neglect the fact that the position information is also crucial for identifying the sentiment polarity of the aspect term. When an aspect term occurs in a sentence, its neighboring words should be given more attention than other words with long distancc. Therefore, we propose a position-aware bidirectional attention network (PBAN) based on bidirectional GRU. PBAN not only concentrates on the position information of aspect terms, but also mutually models the relation between aspect term and sentence by employing bidirectional attention mechanism. The experimental results on SemEval 2014 Datasets demonstrate the effectiveness of our proposed PBAN model.
机译:方面级别的情感分析旨在区分给定句子中每个特定方面术语的情感极性。工业界和学术界都已经意识到了方面术语和句子之间关系的重要性,并尝试通过设计一系列注意模型来建立这种关系的模型。但是,大多数现有方法通常忽略以下事实:位置信息对于识别方面项的情感极性也至关重要。当一个方面的术语出现在句子中时,与其相邻的单词相比,应注意较长的其他单词。因此,我们提出了一种基于双向GRU的位置感知双向注意力网络(PBAN)。 PBAN不仅关注方面词的位置信息,而且通过双向注意机制相互建模方面词与句子之间的关系。 SemEval 2014数据集的实验结果证明了我们提出的PBAN模型的有效性。

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