计算机科学
Boosting(机器学习)
模式
情绪分析
人工智能
情态动词
自然语言处理
情报检索
模式识别(心理学)
机器学习
化学
社会科学
社会学
高分子化学
作者
Xin Jiang,Lihuo He,Fei Gao,Kaifan Zhang,Jie Li,Xinbo Gao
标识
DOI:10.1109/tmm.2025.3590909
摘要
Multimodal sentiment analysis aims at exploiting complementary information from multiple modalities or data sources to enhance the understanding and interpretation of sentiment. While existing multi-modal fusion techniques offer significant improvements in sentiment analysis, real-world scenarios often involve missing modalities, introducing complexity due to uncertainty of which modalities may be absent. To tackle the challenge of incomplete modality-specific feature extraction caused by missing modalities, this paper proposes a Cosine Margin-Aware Network (CMANet) which centers on the Cosine Margin-Aware Distillation (CMAD) module. The core module measures distance between samples and the classification boundary, enabling CMANet to focus on samples near the boundary. So, it effectively captures the unique features of different modal combinations. To address the issue of modality imbalance during modality-specific feature extraction, this paper proposes a Weak Modality Regularization (WMR) strategy, which aligns the feature distributions between strong and weak modalities at the dataset-level, while also enhancing the prediction loss of samples at the sample-level. This dual mechanism improves the recognition robustness of weak modality combination. Extensive experiments demonstrate that the proposed method outperforms the previous best model, MMIN, with a 3.82% improvement in unweighted accuracy. These results underscore the robustness of the approach under conditions of uncertain and missing modalities.
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