Expert-Informed, User-Centric Explanations for Machine Learning

Michael Pazzani, Severine Soltani, Robert Kaufman, Samson Qian, Albert Hsiao

[AAAI-22] Senior Member Presentation Track - Blue Sky
Abstract: We argue that the dominant approach to explainable AI for explaining image classification, annotating images with heatmaps, provides little value for users unfamiliar with deep learning. We argue that explainable AI for images should produce output like experts produce when communicating with one another, with apprentices, and with novices. We provide an expanded set of goals of explainable AI systems and propose a Turing Test for explainable AI.

Sessions where this paper appears

  • Poster Session 1

    Thu, February 24 4:45 PM - 6:30 PM (+00:00)
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  • Poster Session 10

    Sun, February 27 4:45 PM - 6:30 PM (+00:00)
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  • Oral Session 10

    Sun, February 27 6:30 PM - 7:45 PM (+00:00)
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