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Teaching Categories to Human Learners with Visual Explanations

机译:用视觉解释向人类学习者教授类别

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We study the problem of computer-assisted teaching with explanations. Conventional approaches for machine teaching typically only provide feedback at the instance level e.g., the category or label of the instance. However, it is intuitive that clear explanations from a knowledgeable teacher can significantly improve a student's ability to learn a new concept. To address these existing limitations, we propose a teaching framework that provides interpretable explanations as feedback and models how the learner incorporates this additional information. In the case of images, we show that we can automatically generate explanations that highlight the parts of the image that are responsible for the class label. Experiments on human learners illustrate that, on average, participants achieve better test set performance on challenging categorization tasks when taught with our interpretable approach compared to existing methods.
机译:我们通过解释来研究计算机辅助教学的问题。用于机器教学的常规方法通常仅在实例级别(例如,实例的类别或标签)上提供反馈。但是,直观的讲道,博学多才的老师的明确解释可以显着提高学生学习新概念的能力。为了解决这些现有的局限性,我们提出了一个教学框架,该框架提供可解释的解释作为反馈,并为学习者如何结合这些附加信息建模。对于图像,我们表明可以自动生成说明,以突出显示图像中负责类标签的部分。对人类学习者的实验表明,与现有方法相比,使用我们可解释的方法进行授课时,参与者在具有挑战性的分类任务上平均可以获得更好的测试集性能。

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