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Evidence Humans Provide When Explaining Data-Labeling Decisions

机译:人类在解释数据标签决策时提供的证据

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Because machine learning would benefit from reduced data requirements, some prior work has proposed using humans not just to label data, but also to explain those labels. To characterize the evidence humans might want to provide, we conducted a user study and a data experiment. In the user study, 75 participants provided classification labels for 20 photos, justifying those labels with free-text explanations. Explanations frequently referenced concepts (objects and attributes) in the image, yet 26% of explanations invoked concepts not in the image. Boolean logic was common in implicit form, but was rarely explicit. In a follow-up experiment on the Visual Genome dataset, we found that some concepts could be partially defined through their relationship to frequently co-occurring concepts, rather than only through labeling.
机译:因为机器学习将从减少的数据需求中受益,所以一些先前的工作提出了使用人类不仅标记数据,而且解释这些标记的方法。为了表征人类可能想要提供的证据,我们进行了用户研究和数据实验。在用户研究中,有75名参与者为20张照片提供了分类标签,并用自由文本解释为这些标签辩护。解释经常在图像中引用概念(对象和属性),但是有26%的解释调用的概念不在图像中。布尔逻辑以隐式形式很常见,但很少是显式的。在视觉基因组数据集的后续实验中,我们发现某些概念可以通过它们与经常同时出现的概念的关系来部分定义,而不是仅通过标记来定义。

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