Multimodal sentiment analysis has been studied under the assumption that all modalities are available. However, such a strong assumption does not always hold in practice, and most of multimodal fusion models may fail when partial modalities are missing. Several works have addressed the missing modality problem; but most of them only considered the single modality missing case, and ignored the practically more general cases of multiple modalities missing. To this end, in this paper, we propose a Tag-Assisted Transformer Encoder (TATE) network to handle the problem of missing uncertain modalities. Specifically, we design a tag encoding module to cover both the single modality and multiple modalities missing cases, so as to guide the network's attention to those missing modalities. Besides, we adopt a new space projection pattern to align common vectors. Then, a Transformer encoder-decoder network is utilized to learn the missing modality features. At last, the outputs of the Transformer encoder are used for the final sentiment classification. Extensive experiments are conducted on CMU-MOSI and IEMOCAP datasets, showing that our method can achieve significant improvements compared with several baselines.
翻译:在假设所有模式都具备的情况下,已经对多式情绪分析进行了研究,然而,这种强烈的假设并不总是在实际中有效,如果缺少部分模式,多数多式联运融合模式可能会失败。一些工作解决了缺失的模式问题;但大多数工作只考虑单一模式缺失案例,忽视了几乎更一般的多种模式缺失案例。为此,我们在本文件中提议建立一个标签辅助变压器编码器(TATE)网络,以处理缺失的不确定模式问题。具体地说,我们设计了一个标签编码模块,以涵盖单一模式和多种模式缺失案例,从而指导网络注意这些缺失的模式。此外,我们采用了新的空间预测模式,以协调共同的矢量。然后,一个变压器编码器-解码器网络被用来学习缺失的模式特征。最后,变压器编码器的产出被用于最后的情感分类。对CMU-MOSI和IEMOCC数据集进行了广泛的实验,表明我们的方法可以与几个基线相比取得显著的改进。