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Multimodal sentiment analysis is an emerging field of artificial intelligence. The most predominant approaches have made notable progress by designing sophisticated fusion architectures, exploring inter-modal interactions between modalities. However, these works tend to utilize a uniform optimization strategy for each modality, so that only sub-optimal unimodal representations are obtained for multimodal fusion. To address this issue, we propose a novel meta-learning based paradigm that can retain the advantages of unimodal existence and further boost the performance of multimodal fusion. Specifically, we introduce the Adaptive Multimodal Meta-Learning (AMML) to meta-learn the unimodal networks and adapt them for multimodal inference. AMML can (1) effectively obtain more optimized unimodal representation via meta-training on unimodal tasks, which adaptively adjusts the learning rate and assigns a more specific optimization procedure for each modality; (2) and adapt the optimized unimodal representations for multimodal fusion via meta-testing on multimodal tasks. Considering multimodal fusion often suffers from the distributional mismatches between features of different modalities due to heterogeneous nature of the signals, we implement a distribution transformation layer on unimodal representations to regularize the unimodal distributions. In this way, distribution gaps can be reduced to achieve a better effect of fusion. Extensive experiments on two widely-used datasets demonstrate that AMML achieves state-of-the-art performance.
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Sun Ya
Sijie Mai
South China Normal University
Haifeng Hu
University of Science and Technology of China
IEEE Transactions on Affective Computing
Sun Yat-sen University
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Ya et al. (Fri,) studied this question.
synapsesocial.com/papers/6a1aeb87739ab56a908622ae — DOI: https://doi.org/10.1109/taffc.2022.3178231