机器生成的翻译对一般用户有多大用处?猜测错误预测标签的人类评价

Hua Shen, Ting-Hao 'Kenneth' Huang
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引用次数: 42

摘要

向用户解释为什么自动化系统会犯某些错误是非常重要和具有挑战性的。研究人员已经提出了为深度神经网络模型自动生成解释的方法。然而,目前还不清楚这些解释在帮助用户弄清楚为什么会出现错误方面有多大用处。如果一个解释有效地向用户解释了底层深度神经网络模型是如何工作的,那么看到解释的人应该比没有看到解释的人更能预测模型的输出。本文提出了一个关于显示机器生成的视觉解释是否有助于用户理解由图像分类器产生的错误预测标签的调查。我们向150名在线人群工作人员展示了这些图像和正确的标签,并要求他们在有或没有向他们展示机器生成的视觉解释的情况下选择错误预测的标签。结果表明,展示视觉解释并没有提高,反而降低了平均猜测准确率,大约降低了10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Useful Are the Machine-Generated Interpretations to General Users? A Human Evaluation on Guessing the Incorrectly Predicted Labels
Explaining to users why automated systems make certain mistakes is important and challenging. Researchers have proposed ways to automatically produce interpretations for deep neural network models. However, it is unclear how useful these interpretations are in helping users figure out why they are getting an error. If an interpretation effectively explains to users how the underlying deep neural network model works, people who were presented with the interpretation should be better at predicting the model’s outputs than those who were not. This paper presents an investigation on whether or not showing machine-generated visual interpretations helps users understand the incorrectly predicted labels produced by image classifiers. We showed the images and the correct labels to 150 online crowd workers and asked them to select the incorrectly predicted labels with or without showing them the machine-generated visual interpretations. The results demonstrated that displaying the visual interpretations did not increase, but rather decreased, the average guessing accuracy by roughly 10%.
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