Interactive Attention Graph Convolution Networks for Aspect-level Sentiment Classification

Huiyu Han, Xiaoya Qin, Qitao Zhao
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引用次数: 1

Abstract

Different from coarse-grained sentiment analysis, fine-grained sentiment analysis can identify the sentiment orientation of a given aspect in the context. Although neural network model with attention mechanism perform well, most of them focus only on semantic analysis of annotations, with little consideration of syntactic constraints between aspects and context. How to efficiently use syntactic dependency information to optimize the representation of contexts is an important issue. An Interactive Attention Graph Convolutional Network (IAGCN) was constructed by us. In order to use syntactic information, the network first extracts syntactic information on the syntactic dependency tree with the help of the graph convolutional network. Then, through interactive learning, various aspects and contextual representations are generated. In this design, the aspects and context of syntactic information are fully learned. The experimental results on 5 data sets verify the advantages of the model.
面向方面级情感分类的交互式注意图卷积网络
与粗粒度情感分析不同,细粒度情感分析可以识别上下文中给定方面的情感倾向。虽然具有注意机制的神经网络模型表现良好,但大多只关注注释的语义分析,很少考虑方面与上下文之间的句法约束。如何有效地利用句法依赖信息来优化上下文的表示是一个重要的问题。我们构建了一个交互式注意图卷积网络(IAGCN)。为了利用句法信息,该网络首先借助图卷积网络在句法依赖树上提取句法信息。然后,通过互动学习,生成各种方面和语境表征。在本次设计中,充分了解了句法信息的方面和语境。在5个数据集上的实验结果验证了该模型的优越性。
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