4.7 Article

Aspect sentiment analysis with heterogeneous graph neural networks

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.ipm.2022.102953

关键词

Graph attention networks; Aspect sentiment analysis; Opinion mining; Heterogeneous graph neural network; Multi-head attention mechanism; Graph convolution neural networks

资金

  1. National Science Foundation of China [62166003]
  2. Project of Guangxi Science and Technology, China [GuiKeAD20159041, GuiKeAD17195062]
  3. Research Fund of Guangxi Key Lab of Multisource Information Mining and Security, China [20-A-01-01,18-A-01-01, MIMS20-M-01, MIMS21-M-01]
  4. Guangxi Collaborative Innovation Center of Multi-Source Information Integration and Intelligent Processing
  5. Guangxi High Institutions Program of Introducing 100 High-Level Overseas Talents, China
  6. Guangxi ``Bagui'' Teams for Innovation and Research, China

向作者/读者索取更多资源

Aspect-based sentiment analysis is a practical methodology for various fields. This paper proposes a method called heterogeneous graph neural networks (Hete_GNNs) to address the challenge of multiple aspect sentiment representation in sentences. Experimental results demonstrate the effectiveness of the proposed method in sentiment classification tasks.
Aspect-based sentiment analysis technologies may be a very practical methodology for securities trading, commodity sales, movie rating websites, etc. Most recent studies adopt the recurrent neural network or attention-based neural network methods to infer aspect sentiment using opinion context terms and sentence dependency trees. However, due to a sentence often having multiple aspects sentiment representation, these models are hard to achieve satisfactory classification results. In this paper, we discuss these problems by encoding sentence syntax tree, words relations and opinion dictionary information in a unified framework. We called this method heterogeneous graph neural networks (Hete_GNNs). Firstly, we adopt the interactive aspect words and contexts to encode the sentence sequence information for parameter sharing. Then, we utilized a novel heterogeneous graph neural network for encoding these sentences' syntax dependency tree, prior sentiment dictionary, and some part-of-speech tagging information for sentiment prediction. We perform the Hete_GNNs sentiment judgment and report the experiments on five domain datasets, and the results confirm that the heterogeneous context information can be better captured with heterogeneous graph neural networks. The improvement of the proposed method is demonstrated by aspect sentiment classification task comparison.

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