The effects of example-based explanations in a machine learning interface

Carrie J. Cai, Jonas Jongejan, Jess Holbrook
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引用次数: 148

Abstract

The black-box nature of machine learning algorithms can make their predictions difficult to understand and explain to end-users. In this paper, we propose and evaluate two kinds of example-based explanations in the visual domain, normative explanations and comparative explanations (Figure 1), which automatically surface examples from the training set of a deep neural net sketch-recognition algorithm. To investigate their effects, we deployed these explanations to 1150 users on QuickDraw, an online platform where users draw images and see whether a recognizer has correctly guessed the intended drawing. When the algorithm failed to recognize the drawing, those who received normative explanations felt they had a better understanding of the system, and perceived the system to have higher capability. However, comparative explanations did not always improve perceptions of the algorithm, possibly because they sometimes exposed limitations of the algorithm and may have led to surprise. These findings suggest that examples can serve as a vehicle for explaining algorithmic behavior, but point to relative advantages and disadvantages of using different kinds of examples, depending on the goal.
基于示例的解释在机器学习界面中的效果
机器学习算法的黑箱特性使其预测难以理解,也难以向最终用户解释。在本文中,我们在视觉领域提出并评估了两种基于示例的解释,规范性解释和比较解释(图1),它们自动从深度神经网络草图识别算法的训练集中呈现示例。为了研究它们的效果,我们在QuickDraw(一个用户绘制图像的在线平台)上向1150名用户部署了这些解释,并查看识别器是否正确地猜测了预期的图像。当算法无法识别绘图时,那些得到规范解释的人会觉得他们对系统有了更好的理解,并认为系统具有更高的能力。然而,比较解释并不总是能提高对算法的认知,可能是因为它们有时暴露了算法的局限性,并可能导致意外。这些发现表明,例子可以作为解释算法行为的工具,但也指出了使用不同类型的例子的相对优点和缺点,这取决于目标。
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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