More Than Accuracy: Towards Trustworthy Machine Learning Interfaces for Object Recognition

Hendrik Heuer, A. Breiter
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引用次数: 6

Abstract

This paper investigates the user experience of visualizations of a machine learning (ML) system that recognizes objects in images. This is important since even good systems can fail in unexpected ways as misclassifications on photo-sharing websites showed. In our study, we exposed users with a background in ML to three visualizations of three systems with different levels of accuracy. In interviews, we explored how the visualization helped users assess the accuracy of systems in use and how the visualization and the accuracy of the system affected trust and reliance. We found that participants do not only focus on accuracy when assessing ML systems. They also take the perceived plausibility and severity of misclassification into account and prefer seeing the probability of predictions. Semantically plausible errors are judged as less severe than errors that are implausible, which means that system accuracy could be communicated through the types of errors.
不仅仅是准确性:面向对象识别的可信赖机器学习接口
本文研究了识别图像中物体的机器学习(ML)系统的可视化用户体验。这一点很重要,因为即使是好的系统也可能以意想不到的方式失败,就像照片分享网站上的错误分类所显示的那样。在我们的研究中,我们向具有ML背景的用户展示了三个不同准确度的系统的三种可视化效果。在访谈中,我们探讨了可视化如何帮助用户评估使用中的系统的准确性,以及系统的可视化和准确性如何影响信任和依赖。我们发现参与者在评估机器学习系统时不仅关注准确性。他们也会考虑到错误分类的合理性和严重性,更喜欢看到预测的可能性。语义上合理的错误被认为比不合理的错误更不严重,这意味着系统的准确性可以通过错误的类型来传达。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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