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Adversarial Regularization for Visual Question Answering: Strengths, Shortcomings, and Side Effects

机译:对抗问题的对抗正规化回答:优势,缺点和副作用

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Visual question answering (VQA) models have been shown to over-rely on linguistic biases in VQA datasets. answering questions "blindly" without considering visual context. Adversarial regularization (AdvReg) aims to address this issue via an adversary subnetwork that encourages the main model to learn a bias-free representation of the question. In this work, we investigate the strengths and shortcomings of AdvReg with the goal of better understanding how it affects inference in VQA models. Despite achieving a new state-of-the-art on VQA-CP, we find that AdvReg yields several undesirable side-effects, including unstable gradients and sharply reduced performance on in-domain examples. We demonstrate that gradual introduction of regularization during training helps to alleviate, but not completely solve, these issues. Through error analyses, we observe that AdvReg improves generalization to binary questions, but impairs performance on questions with heterogeneous answer distributions. Qualitatively, we also find that regularized models tend to over-rely on visual features, while ignoring important linguistic cues in the question. Our results suggest that AdvReg requires further refinement before it can be considered a viable bias mitigation technique for VQA.
机译:已显示视觉问题应答(VQA)模型过度依赖VQA数据集中的语言偏差。在不考虑视觉上下文的情况下“盲目地”回答问题。对抗正规化(AdvReg)旨在通过对抗的子网来解决这个问题,鼓励主要模型学习问题无偏见的代表性。在这项工作中,我们调查了AdvReg的优势和缺点,以便更好地了解它如何影响VQA模型的推论。尽管在VQA-CP上实现了一种新的最先进的最先进的,我们发现ADVREG产生了几种不良副作用,包括不稳定的渐变,并对域中的域急剧下降。我们证明培训期间正规化的逐步引入有助于缓解但不完全解决这些问题。通过错误分析,我们观察到AdvReg提高了二进制问题的概括,但损害了异构答案分布的问题。定性,我们还发现正规化的模型倾向于过度依赖视觉功能,同时忽略了问题中的重要语言线索。我们的研究结果表明,AdvReg需要进一步改进,然后才能被认为是VQA可行的偏置缓解技术。

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