Explainable recommendation: when design meets trust calibration

Author:

Naiseh Mohammad,Al-Thani Dena,Jiang Nan,Ali Raian

Abstract

AbstractHuman-AI collaborative decision-making tools are being increasingly applied in critical domains such as healthcare. However, these tools are often seen as closed and intransparent for human decision-makers. An essential requirement for their success is the ability to provide explanations about themselves that are understandable and meaningful to the users. While explanations generally have positive connotations, studies showed that the assumption behind users interacting and engaging with these explanations could introduce trust calibration errors such as facilitating irrational or less thoughtful agreement or disagreement with the AI recommendation. In this paper, we explore how to help trust calibration through explanation interaction design. Our research method included two main phases. We first conducted a think-aloud study with 16 participants aiming to reveal main trust calibration errors concerning explainability in AI-Human collaborative decision-making tools. Then, we conducted two co-design sessions with eight participants to identify design principles and techniques for explanations that help trust calibration. As a conclusion of our research, we provide five design principles: Design for engagement, challenging habitual actions, attention guidance, friction and support training and learning. Our findings are meant to pave the way towards a more integrated framework for designing explanations with trust calibration as a primary goal.

Funder

iQ HealthTech

Publisher

Springer Science and Business Media LLC

Subject

Computer Networks and Communications,Hardware and Architecture,Software

Cited by 11 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. C-XAI: A Conceptual Framework for Designing XAI tools that Support Trust Calibration;Journal of Responsible Technology;2024-01

2. Human Centricity in the Relationship Between Explainability and Trust in AI;IEEE Technology and Society Magazine;2023-12

3. AI-CDSS Design Guidelines and Practice Verification;International Journal of Human–Computer Interaction;2023-07-21

4. How the different explanation classes impact trust calibration: The case of clinical decision support systems;International Journal of Human-Computer Studies;2023-01

5. Beyond AI-powered context-aware services: the role of human–AI collaboration;Industrial Management & Data Systems;2022-12-09

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