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Mental models of AI-based systems: User predictions and explanations of image classification results

机译:基于AI的系统的心理模型:用户预测和图像分类结果的解释

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Humans should be able work more effectively with artificial intelligence-based systems when they can predict likely failures and form useful mental models of how the systems work. We conducted a study of human's mental models of artificial intelligence systems focusing on a high-performing image classifier. Participants viewed individual labeled images in one of three general classes and then tried to predict whether the classifier would label it correctly. Participants were able to begin performing this task at levels much better than chance, 69% correct. However, after 137 trials with feedback, their performance improved a small, but statistically significant amount to 73%. Analysis of these results and comments indicated that humans were using their own perceptions of the images as first-approximation proxies. 'Projecting' human characteristics onto a computer might be considered a cognitive bias, but in this task, the strategy seemed to yield good initial results. This might be called effective anthropomorphism. Participants sometimes used this strategy both implicitly and explicitly. The paper includes discussion of why this strategy might have worked better than alternatives, why further learning was quite difficult, and what assumptions about similarities between human perception and image classification systems may in fact be correct.
机译:当人工智能的系统可以预测可能的失败并形成系统如何工作的有用心理模型,人类应该能够更有效地工作。我们对专注于高性能图像分类器的人工智能系统的人工智能系统进行了研究。参与者在三个常规类之一中查看了个体标记的图像,然后尝试预测分类器是否会正确标记。参与者能够在水平上开始执行这项任务,比偶然好,69%正确。然而,在137名试验后,其性能提高了较小,但统计学上大量的73%。分析这些结果和评论表明,人类正在使用自己对图像的看法作为第一近似代理。 “将”人类特征在计算机上可能被视为一种认知偏见,但在这项任务中,该战略似乎产生了良好的初始结果。这可能称为有效的拟人体。参与者有时会隐含地和明确地使用此策略。本文包括讨论为什么这种策略可能比替代方案更好地工作,为什么进一步学习非常困难,以及人类感知和图像分类系统之间的相似性的假设实际上是正确的。

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