Attention fusion network for multimodal sentiment analysis

被引:0
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作者
Yuanyi Luo
Rui Wu
Jiafeng Liu
Xianglong Tang
机构
[1] Harbin Institute of Technology,
来源
关键词
Multimodal sentiment analysis; Attention mechanism; Multimodal fusion;
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摘要
The main research problem in multimodal sentiment analysis is to model inter-modality dynamics. However, most of the current work cannot consider enough in this aspect. In this study, we propose a multimodal fusion network MSA-AFN, which considers both multimodal relationships and differences in modal contributions to the task. Specifically, in the feature extraction process, we consider not only the relationship between audio and text, but also the contribution of temporal features to the task. In the process of multimodal fusion, based on the soft attention mechanism, the feature representation of each modality is weighted and connected according to their contribution to the task. We evaluate our proposed approach on the Chinese multimodal sentiment analysis dataset: CH-SIMS. Results show that our model achieves better results than comparison models. Moreover, the performance of some baselines has been improved by 0.28% to 9.5% after adding the component of our network.
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页码:8207 / 8217
页数:10
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