情态缺失与元抽样(M3S):一种有效的通用的情态缺失多模态情感分析方法

Q3 Environmental Science AACL Bioflux Pub Date : 2022-10-07 DOI:10.48550/arXiv.2210.03428
Haozhe Chi, Minghua Yang, Junhao Zhu, Guanhong Wang, Gaoang Wang
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引用次数: 0

摘要

多模态情感分析是利用多模态数据来观察心理活动的一种重要方法。然而,由于记录或传输错误,某些模式可能包含不完整的数据。大多数解决缺失模态的现有工作通常假设一个特定的模态完全缺失,很少考虑多种模态的混合缺失。在本文中,我们提出了一种简单而有效的元抽样方法,用于缺失模态的多模态情感分析,即基于缺失模态的元抽样(M3S)。具体来说,M3S将缺失模态采样策略纳入模态不可知论元学习(MAML)框架。M3S可以作为现有模型的有效附加训练组件,并显着提高其在具有混合缺失模态的多模态数据上的性能。我们在IEMOCAP, SIMS和CMU-MOSI数据集上进行了实验,与最近最先进的方法相比,取得了卓越的性能。
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Missing Modality meets Meta Sampling (M3S): An Efficient Universal Approach for Multimodal Sentiment Analysis with Missing Modality
Multimodal sentiment analysis (MSA) is an important way of observing mental activities with the help of data captured from multiple modalities. However, due to the recording or transmission error, some modalities may include incomplete data. Most existing works that address missing modalities usually assume a particular modality is completely missing and seldom consider a mixture of missing across multiple modalities. In this paper, we propose a simple yet effective meta-sampling approach for multimodal sentiment analysis with missing modalities, namely Missing Modality-based Meta Sampling (M3S). To be specific, M3S formulates a missing modality sampling strategy into the modal agnostic meta-learning (MAML) framework. M3S can be treated as an efficient add-on training component on existing models and significantly improve their performances on multimodal data with a mixture of missing modalities. We conduct experiments on IEMOCAP, SIMS and CMU-MOSI datasets, and superior performance is achieved compared with recent state-of-the-art methods.
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来源期刊
AACL Bioflux
AACL Bioflux Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.40
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