Explainable artificial intelligence for education and training

K. Fiok, F. Farahani, W. Karwowski, T. Ahram
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引用次数: 22

Abstract

Researchers and software users benefit from the rapid growth of artificial intelligence (AI) to an unprecedented extent in various domains where automated intelligent action is required. However, as they continue to engage with AI, they also begin to understand the limitations and risks associated with ceding control and decision-making to not always transparent artificial computer agents. Understanding of “what is happening in the black box” becomes feasible with explainable AI (XAI) methods designed to mitigate these risks and introduce trust into human-AI interactions. Our study reviews the essential capabilities, limitations, and desiderata of XAI tools developed over recent years and reviews the history of XAI and AI in education (AIED). We present different approaches to AI and XAI from the viewpoint of researchers focused on AIED in comparison with researchers focused on AI and machine learning (ML). We conclude that both groups of interest desire increased efforts to obtain improved XAI tools; however, these groups formulate different target user groups and expectations regarding XAI features and provide different examples of possible achievements. We summarize these viewpoints and provide guidelines for scientists looking to incorporate XAI into their own work.
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用于教育和培训的可解释人工智能
在需要自动化智能行为的各个领域,研究人员和软件用户都从人工智能(AI)的快速增长中获得了前所未有的好处。然而,随着他们继续与人工智能打交道,他们也开始理解将控制权和决策权交给不总是透明的人工计算机代理的局限性和风险。通过可解释的人工智能(XAI)方法,理解“黑箱中正在发生的事情”变得可行,这些方法旨在减轻这些风险,并在人类与人工智能的互动中引入信任。我们的研究回顾了近年来开发的XAI工具的基本功能、局限性和需求,并回顾了XAI和AI在教育(AIED)中的历史。我们从专注于AIED的研究人员的角度,与专注于AI和机器学习(ML)的研究人员的角度,提出了不同的AI和XAI方法。我们得出的结论是,两组兴趣都希望增加努力以获得改进的XAI工具;然而,对于XAI的特性,这些小组制定了不同的目标用户群体和期望,并提供了不同的可能成就示例。我们总结了这些观点,并为希望将XAI纳入自己工作的科学家提供了指导方针。
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来源期刊
CiteScore
2.80
自引率
12.50%
发文量
40
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