A Sentiment and Syntactic-Aware Graph Convolutional Network for Aspect-Level Sentiment Classification

Yuxin Yang, Xia Sun, Qiang Lu, R. Sutcliffe, Jun Feng
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引用次数: 1

Abstract

Aspect-level sentiment classification (ASC) is a significant problem in fine-grained sentiment analysis, which automatically predicts the sentiment polarity of a given aspect in a sentence. Dependency tree-based graph convolutional networks have been widely studied for their ability to effectively capture the dependencies of aspect words with other words. However, constructing more accurate syntactic trees by introducing external knowledge has limited improvement on ungrammatical informal texts and has led to over-parameterization of the model. To alleviate this problem, we propose a sentiment and syntactic-aware graph convolutional network (SaS-GCN) that combines syntactic and sentiment relations. We use an attention mechanism and the Sparsemax activation function to construct a sparse sentiment-dependent graph. Compared with existing methods that use LSTM or CNN to obtain semantics from text directly, this graph, combined with a GCN, contains more semantic features. Moreover, we redesign the network structure of GCN, calling it EN-GCN, to make it sensitive to node dimensional features and hence to have a strong feature mining ability. The experimental results indicate that our model outperforms state-of-the-art methods. In particular, when evaluated on the Rest15 and Rest16 datasets, the F1 scores of the proposed lightweight model are 4.15% and 3.77% better than BERT respectively.
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面向方面级情感分类的情感和句法感知图卷积网络
方面级情感分类(ASC)是细粒度情感分析中的一个重要问题,它能够自动预测句子中给定方面的情感极性。基于依赖树的图卷积网络由于能够有效地捕获方面词与其他词之间的依赖关系而得到了广泛的研究。然而,通过引入外部知识来构建更精确的句法树对非语法非正式文本的改进有限,并导致模型的过度参数化。为了缓解这一问题,我们提出了一种结合句法和情感关系的情感和句法感知图卷积网络(SaS-GCN)。我们使用注意机制和Sparsemax激活函数来构造一个稀疏的情感依赖图。与现有使用LSTM或CNN直接从文本中获取语义的方法相比,该图与GCN相结合,包含了更多的语义特征。此外,我们重新设计了GCN的网络结构,称之为EN-GCN,使其对节点维度特征敏感,从而具有较强的特征挖掘能力。实验结果表明,我们的模型优于目前最先进的方法。特别是,在Rest15和Rest16数据集上进行评估时,所提出的轻量级模型的F1分数分别比BERT高4.15%和3.77%。
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