论文标题

在模态偏见识别和减少

On Modality Bias Recognition and Reduction

论文作者

Guo, Yangyang, Nie, Liqiang, Cheng, Harry, Cheng, Zhiyong, Kankanhalli, Mohan, Del Bimbo, Alberto

论文摘要

使多模式数据中的每种模态贡献贡献至关重要,对于学习多功能多模式模型至关重要。但是,现有方法通常由模型训练过程中的一种或几种模式主导,从而导致次优性能。在本文中,我们将此问题称为模态偏见,并试图在多模式分类的背景下进行系统,全面地进行研究。在进行了几个经验分析之后,我们认识到一种模式会影响模型预测,因为这种模式与实例标签具有虚假的相关性。为了主要促进对模式偏差问题的评估,我们分别构建了两个数据集,以符合彩色数字识别和视频动作识别任务,该数据符合分布式(OOD)协议。在视觉问题回答任务中与基准合作,我们从经验上证明了这些OOD数据集上现有方法的性能下降是合理的,这是证明模态偏见学习合理的证据。此外,为了克服此问题,我们提出了一种插件损耗功能方法,从而根据训练集统计数据可以自适应地学习每个标签的特征空间。此后,我们将此方法全部应用​​于八个基线,以测试其有效性。从四个数据集的结果有关以上三个任务的结果,我们的方法与基准相比产生了显着的性能改进,这表明其在减少模态偏差问题上的优势。

Making each modality in multi-modal data contribute is of vital importance to learning a versatile multi-modal model. Existing methods, however, are often dominated by one or few of modalities during model training, resulting in sub-optimal performance. In this paper, we refer to this problem as modality bias and attempt to study it in the context of multi-modal classification systematically and comprehensively. After stepping into several empirical analysis, we recognize that one modality affects the model prediction more just because this modality has a spurious correlation with instance labels. In order to primarily facilitate the evaluation on the modality bias problem, we construct two datasets respectively for the colored digit recognition and video action recognition tasks in line with the Out-of-Distribution (OoD) protocol. Collaborating with the benchmarks in the visual question answering task, we empirically justify the performance degradation of the existing methods on these OoD datasets, which serves as evidence to justify the modality bias learning. In addition, to overcome this problem, we propose a plug-and-play loss function method, whereby the feature space for each label is adaptively learned according to the training set statistics. Thereafter, we apply this method on eight baselines in total to test its effectiveness. From the results on four datasets regarding the above three tasks, our method yields remarkable performance improvements compared with the baselines, demonstrating its superiority on reducing the modality bias problem.

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