信任解释器:课程设计中可解释人工智能的教师验证

Vinitra Swamy, Sijia Du, M. Marras, Tanja Kaser
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引用次数: 2

摘要

在过去的几年里,用于学习分析的深度学习模型变得越来越流行;然而,这些方法在现实世界中仍然没有被广泛采用,可能是由于缺乏信任和透明度。在本文中,我们通过为黑盒神经网络实现可解释的人工智能方法来解决这个问题。这项工作的重点是在线和混合学习的背景和学生成功预测模型的用例。我们采用两两研究设计,使我们能够调查两两课程之间的受控差异。我们的分析涵盖了五个课程对,它们在一个教育相关方面和两种流行的基于实例的可解释人工智能方法(LIME和SHAP)上存在差异。我们定量地比较不同课程和方法的解释之间的距离。然后,我们通过26个对大学教育工作者的半结构化访谈来验证LIME和SHAP的解释,了解他们认为哪些特征对学生的成功贡献最大,他们最信任哪些解释,以及他们如何将这些见解转化为可操作的课程设计决策。我们的结果表明,从数量上看,解释者对什么是重要的意见分歧很大,从质量上看,专家们自己也不同意哪些解释是最值得信赖的。所有的代码,扩展的结果,和采访协议提供在https://github.com/epfl-ml4ed/trusting-explainers。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trusting the Explainers: Teacher Validation of Explainable Artificial Intelligence for Course Design
Deep learning models for learning analytics have become increasingly popular over the last few years; however, these approaches are still not widely adopted in real-world settings, likely due to a lack of trust and transparency. In this paper, we tackle this issue by implementing explainable AI methods for black-box neural networks. This work focuses on the context of online and blended learning and the use case of student success prediction models. We use a pairwise study design, enabling us to investigate controlled differences between pairs of courses. Our analyses cover five course pairs that differ in one educationally relevant aspect and two popular instance-based explainable AI methods (LIME and SHAP). We quantitatively compare the distances between the explanations across courses and methods. We then validate the explanations of LIME and SHAP with 26 semi-structured interviews of university-level educators regarding which features they believe contribute most to student success, which explanations they trust most, and how they could transform these insights into actionable course design decisions. Our results show that quantitatively, explainers significantly disagree with each other about what is important, and qualitatively, experts themselves do not agree on which explanations are most trustworthy. All code, extended results, and the interview protocol are provided at https://github.com/epfl-ml4ed/trusting-explainers.
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