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多说一点,再多说一点:解释对从人工智能反馈中学习的影响

Tell me more, tell me more: the impact of explanations on learning from feedback provided by Artificial Intelligence

European Journal of Information Systems · 2024
被引 8
ABS 4

中文导读

通过573人实验发现,AI反馈中的解释能帮助知识较少的用户提高学习效果,但对知识较多的用户直接提升任务表现。

Abstract

Whereas learning is one of the primary goals of Explainable Artificial Intelligence (XAI), we know little about whether, how, and when explanations enhance users’ learning from feedback provided by Artificial Intelligence (AI). Drawing on Feedback Theory as a fundamental theoretical lens, we formulate a research model wherein explanations enhance informativeness and task performance, contingent on users’ prior knowledge, ultimately leading to a higher learning outcome. This research model is tested in a randomized between-subjects online experiment with 573 participants whose task is to match Google Street View pictures to their city of origin. We find a positive effect of explanations on learning outcome, which is fully mediated by informativeness, for users with less prior knowledge. Furthermore, we find that explanations positively impact users’ task performance, where this effect is direct for more knowledgeable users and fully mediated by informativeness for less knowledgeable users. We seek to elucidate the mechanisms underlying these effects of explanations on learning from AI feedback in focus groups with AI experts and users. By studying the consequences of explanations as part of AI feedback for users in non-routine inference tasks, we advance the understanding of explanations as facilitators of human learning from AI systems.

可解释人工智能反馈理论用户学习任务绩效实验研究