A text sentiment analysis method based on BiGRU and capsule network

Authors

  • Qiao Baiyou
  • Kok Kwang Phoon
  • Yang Lu
  • Jiang Youwen

DOI:

https://doi.org/10.59782/iam.v1i1.239

Keywords:

deep learning, aspect features, sentiment analysis, review text

Abstract

Most of the existing sentiment analysis methods based on product review texts rarely consider the aspect features of the review texts, and the relevant analysis models do not consider the long-term contextual dependency features and local text features at the same time, thus affecting the accuracy of sentiment analysis. A text sentiment analysis method based on a bidirectional gated recurrent network (BiGRU) and a capsule network is proposed. This method first uses a word frequency statistics-based method to extract the aspect features of the review text and integrates them into the word vector representation, thereby effectively improving the expressive power of the word vector. Then, BiGRU is used to extract the long-term contextual dependency features of the text, and the capsule network is used to extract the local features of the text, thereby achieving high-precision text sentiment analysis based on aspects. Experimental results on real datasets show that the proposed method is superior to existing sentiment analysis models such as bidirectional long short-term memory network (BiLSTM), CNN-LSTM, and TextCNN in terms of evaluation indicators such as accuracy, precision, recall, and score.

How to Cite

Baiyou, Q., Phoon, K. K., Lu, Y., & Youwen, J. (2024). A text sentiment analysis method based on BiGRU and capsule network. Insights of Automation in Manufacturing, 1(1), 165–177. https://doi.org/10.59782/iam.v1i1.239

Issue

Section

Articles