BATAE-GRU:基于注意的面向情感分析模型

Yuan Wang, Qian Wang
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引用次数: 1

摘要

方面级情感分类旨在识别给定方面的情感极性。然而,过去的方法大多没有很好地分析词语的作用,没有很好地实现上下文与给定方面之间的联系,这极大地限制了模型的有效性。在本文中,我们设计了一个基于注意机制的模型。首先,用预训练的BERT编码表示词嵌入和方面嵌入。接下来,我们使用递归神经网络来获取隐藏状态。然后,语境和方面通过注意机制联系起来。最后,在情感分析领域广泛使用的3个数据集上进行了实验。将BATAE-GRU模型与当前几种先进模型进行了比较。结果表明,BATAE-GRU模型的实验结果优于其他模型;与ATAE-LSTM模型相比,该模型在两次对比实验中的准确率分别提高了6.9%和9.9%。
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BATAE-GRU: Attention-based Aspect Sentiment Analysis Model
Aspect-level sentiment classification aims to identify the sentiment polarity of a given aspect. However, most of the past methods do not analyze the role of words well, and the connection between context and a given aspects is not well realized, which greatly limits the effectiveness of the model. In this paper, we have designed a model based on the attention mechanism. First, the word embedding and aspect embedding are represented by pre-trained BERT coding. Next, we use the recurrent neural network to obtain the hidden state. Then, the context and aspect are related through the attention mechanism. Finally, the experiments were conducted on 3 data sets widely used in the field of sentiment analysis. The BATAE-GRU model was compared with several current advanced models. The results showed that the experimental results of the BATAE-GRU model were better than other models; Compared with the ATAE-LSTM model, the accuracy of the model in two comparative experiments has been improved by 6.9% and 9.9% respectively.
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