Building robust multimodal models are crucial for achieving reliable deployment in the wild. Despite its importance, less attention has been paid to identifying and improving the robustness of Multimodal Sentiment Analysis (MSA) models. In this work, we hope to address that by (i) Proposing simple diagnostic checks for modality robustness in a trained multimodal model. Using these checks, we find MSA models to be highly sensitive to a single modality, which creates issues in their robustness; (ii) We analyze well-known robust training strategies to alleviate the issues. Critically, we observe that robustness can be achieved without compromising on the original performance. We hope our extensive study-performed across five models and two benchmark datasets-and proposed procedures would make robustness an integral component in MSA research. Our diagnostic checks and robust training solutions are simple to implement and available at https://github. com/declare-lab/MSA-Robustness.
翻译:建立稳健的多式联运模式对于在野外实现可靠部署至关重要。尽管它很重要,但对确定和提高多模式敏感分析(MSA)模式的稳健性重视不够。在这项工作中,我们希望通过下列方法解决这个问题:(一) 提出简单的诊断性检查,以便在经过培训的多式联运模式中实现模式稳健性。利用这些检查,我们发现管理事务协议模式对单一模式非常敏感,从而产生问题。 (二) 我们分析众所周知的稳健培训战略,以缓解问题。关键是,我们发现强健性可以在不损害最初绩效的情况下实现。我们希望我们经过广泛研究的五个模式和两个基准数据集以及拟议的程序将使稳健性成为管理事务协议研究的一个组成部分。我们的诊断性检查和稳健的培训解决方案很容易实施,可在https://github.com/declare-lab/MSA-Robustness查阅。