Emotion Causal Chain Analysis Method Based on Multi-Modal Feature Fusion
DOI: 10.23977/jaip.2026.090112 | Downloads: 1 | Views: 55
Author(s)
Lin Gan 1, Zhengpeng Zhang 1
Affiliation(s)
1 School of Information and Intelligent Engineering, University of Sanya, Sanya, Hainan, 572100, China
Corresponding Author
Lin GanABSTRACT
The development of multi-modal large models provides a robust representation foundation for sentiment analysis. However, current research primarily focuses on static classification tasks, neglecting the dynamic evolutionary nature of emotions. This paper centers around the core concept of the "emotion causal chain," systematically reviewing the research status of multi-modal feature fusion and counterfactual learning in the field of sentiment analysis. Based on defining the theoretical connotation of the emotion causal chain, it critically compares early fusion, attention mechanisms, graph neural networks, and large model fusion paradigms from a technological evolution perspective, pointing out the fundamental limitations of existing methods in terms of interaction range, spurious correlation control, and interpretability. Furthermore, it focuses on discussing the theoretical foundation and application paths of counterfactual learning, elucidating its methodological advantages in modal decoupling, temporal intervention, and path identification. It also systematically summarizes the implementation framework based on generative models, contrastive learning, causal attention, and large model integration. The research suggests that counterfactual learning enables models to go beyond statistical associations and touch upon the causal mechanisms of emotion evolution, enhancing interpretability and robustness while providing computational tools for analyzing cross-modal emotion transmission paths. Finally, it looks forward to future directions, emphasizing that building a multi-modal fusion model with causal reasoning ability is the key to achieving interpretable and strongly generalizable emotional intelligence.
KEYWORDS
Multi-modal Fusion; Emotion Causal Chain; Counterfactual Learning; Causal Inference; Sentiment AnalysisCITE THIS PAPER
Lin Gan, Zhengpeng Zhang. Emotion Causal Chain Analysis Method Based on Multi-Modal Feature Fusion. Journal of Artificial Intelligence Practice (2026). Vol. 9, No. 1, 99-107. DOI: http://dx.doi.org/10.23977/jaip.2026.090112.
REFERENCES
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[2] Zhang Zhiwen, Yu Nai Gong, Bian Yan, et al. Research on Emotion Recognition Based on Multi-modal Physiological Signal Feature Fusion [J]. Journal of Biomedical Engineering, 2025, 42(01): 17-23.
[3] Zhang Yiqing. Research on Emotional Understanding Method Based on Multi-modal Feature Fusion [D]. Beijing University of Posts and Telecommunications, 2025.
[4] Gao Jingjing. Research on Multi-modal Emotion Recognition Based on Multi-dimensional Features and CRNN [D]. Qufu Normal University, 2025.
[5] Wang Ke. Research on Emotion Recognition Method Based on Multi-modal Fusion [D]. Jilin University, 2025.
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