Title: A sentiment classification method for Weibo sensitive topic text based on multimodal features
Authors: Manlin Li
Addresses: Henan Kaifeng College of Science Technology and Communication, KaiFeng, 475004, China
Abstract: Due to the problem of reduced classification accuracy in traditional text sentiment classification methods, this paper proposes a Weibo sensitive topic text sentiment classification method based on multimodal features. Firstly, the bidirectional loop structure is introduced to improve the GRU model, and a BiGRU model is constructed for multimodal feature extraction and fusion of sensitive topics on Weibo. Secondly, by combining seed features, similar features, and residual features, a multimodal feature cluster is constructed to improve the accuracy of classification. Finally, the constructed multimodal feature clusters are input into the support vector machine model to complete sentiment classification of Weibo sensitive topic text. The experimental results show that compared with traditional methods, our method achieves higher accuracy in all emotion categories.
Keywords: multimodal features; Weibo sensitive topics; text sentiment classification; BiGRU model; multimodal feature clusters.
DOI: 10.1504/IJBIDM.2025.145357
International Journal of Business Intelligence and Data Mining, 2025 Vol.26 No.3/4, pp.316 - 328
Received: 05 Dec 2023
Accepted: 02 Aug 2024
Published online: 31 Mar 2025 *