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Effective Attention Modeling for Aspect-Level Sentiment Classification

机译:方面水平情感分类的有效注意力模型

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Aspect-level sentiment classification aims to determine the sentiment polarity of a review sentence towards an opinion target. A sentence could contain multiple sentiment-target pairs; thus the main challenge of this task is to separate different opinion contexts for different targets. To this end, attention mechanism has played an important role in previous state-of-the-art neural models. The mechanism is able to capture the importance of each context word towards a target by modeling their semantic associations. We build upon this line of research and propose two novel approaches for improving the effectiveness of attention. First, we propose a method for target representation that better captures the semantic meaning of the opinion target. Second, we introduce an attention model that incorporates syntactic information into the attention mechanism. We experiment on attention-based LSTM (Long Short-Term Memory) models using the datasets from SemEval 2014, 2015, and 2016. The experimental results show that the conventional attention-based LSTM can be substantially improved by incorporating the two approaches.
机译:方面级别的情感分类旨在确定评论句子对观点目标的情感极性。一个句子可以包含多个情感目标对。因此,这项任务的主要挑战是为不同的目标区分不同的意见背景。为此,注意力机制在以前的最新神经模型中发挥了重要作用。该机制能够通过对每个上下文单词的语义关联进行建模来捕获每个上下文单词对目标的重要性。我们以这方面的研究为基础,并提出了两种新颖的方法来提高注意力的有效性。首先,我们提出了一种用于目标表示的方法,该方法可以更好地捕获观点目标的语义。其次,我们引入一种注意力模型,该模型将句法信息整合到注意力机制中。我们使用2014年,2015年和2016年的SemEval数据集对基于注意力的LSTM(长期短期记忆)模型进行了实验。实验结果表明,通过结合两种方法,可以大大改善传统的基于注意力的LSTM。

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