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Aspect-Level Sentiment Analysis Based on Position Features Using Multilevel Interactive Bidirectional GRU and Attention Mechanism

机译:基于使用多级交互式双向GRU和注意机制的位置特征的梯度级别情绪分析

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The aim of aspect-level sentiment analysis is to identify the sentiment polarity of a given target term in sentences. Existing neural network models provide a useful account of how to judge the polarity. However, context relative position information for the target terms is adversely ignored under the limitation of training datasets. Considering position features between words into the models can improve the accuracy of sentiment classification. Hence, this study proposes an improved classification model by combining multilevel interactive bidirectional Gated Recurrent Unit (GRU), attention mechanisms, and position features (MI-biGRU). Firstly, the position features of words in a sentence are initialized to enrich word embedding. Secondly, the approach extracts the features of target terms and context by using a well-constructed multilevel interactive bidirectional neural network. Thirdly, an attention mechanism is introduced so that the model can pay greater attention to those words that are important for sentiment analysis. Finally, four classic sentiment classification datasets are used to deal with aspect-level tasks. Experimental results indicate that there is a correlation between the multilevel interactive attention network and the position features. MI-biGRU can obviously improve the performance of classification.
机译:方面情绪分析的目的是识别句子中给定目标术语的情感极性。现有的神经网络模型提供了如何判断极性的有用帐户。然而,在训练数据集的限制下,对目标术语的上下文相对位置信息受到不利地忽略。考虑到模型中的单词之间的位置特征可以提高情绪分类的准确性。因此,本研究通过组合多级交互式双向门控复发单元(GRU),注意机构和位置特征(MI-BIGRU)来提出改进的分类模型。首先,句子中单词的位置特征被初始化以丰富Word嵌入。其次,该方法通过使用良好构造的多级交互式双向神经网络提取目标术语和上下文的特征。第三,引入了注意机制,以便该模型可以更加关注对情绪分析很重要的词语。最后,使用四种经典情绪分类数据集来处理方面级任务。实验结果表明,多级交互式关注网络与位置特征之间存在相关性。 MI-BIGRU可以显然可以提高分类的性能。

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