Breaking Shortcuts by Masking for Robust Visual Reasoning

Keren Ye, Mingda Zhang, Adriana Kovashka
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引用次数: 7

Abstract

Visual reasoning is a challenging but important task that is gaining momentum. Examples include reasoning about what will happen next in film, or interpreting what actions an image advertisement prompts. Both tasks are "puzzles" which invite the viewer to combine knowledge from prior experience, to find the answer. Intuitively, providing external knowledge to a model should be helpful, but it does not necessarily result in improved reasoning ability. An algorithm can learn to find answers to the prediction task yet not perform generalizable reasoning. In other words, models can leverage "shortcuts" between inputs and desired outputs, to bypass the need for reasoning. We develop a technique to effectively incorporate external knowledge, in a way that is both interpretable, and boosts the contribution of external knowledge for multiple complementary metrics. In particular, we mask evidence in the image and in retrieved external knowledge. We show this masking successfully focuses the method’s attention on patterns that generalize. To properly understand how our method utilizes external knowledge, we propose a novel side evaluation task. We find that with our masking technique, the model can learn to select useful knowledge pieces to rely on.1
通过屏蔽打破快捷键实现稳健的视觉推理
视觉推理是一项具有挑战性但又很重要的任务,它正在获得动力。例子包括推理电影中接下来会发生什么,或者解释图像广告提示的动作。这两项任务都是“谜题”,邀请观众结合之前的经验知识来寻找答案。直观地说,向模型提供外部知识应该是有帮助的,但这并不一定会提高推理能力。算法可以学习找到预测任务的答案,但不能进行泛化推理。换句话说,模型可以利用输入和期望输出之间的“捷径”来绕过推理的需要。我们开发了一种技术,以一种既可解释的方式,有效地结合外部知识,并促进外部知识对多个互补指标的贡献。特别是,我们掩盖了图像和检索到的外部知识中的证据。我们展示了这种掩蔽成功地将方法的注意力集中在一般化的模式上。为了正确理解我们的方法如何利用外部知识,我们提出了一个新的侧面评估任务。我们发现,使用我们的掩蔽技术,模型可以学习选择有用的知识片段来依赖
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