English

EUCA: the End-User-Centered Explainable AI Framework

Human-Computer Interaction 2022-03-02 v2

Abstract

The ability to explain decisions to end-users is a necessity to deploy AI as critical decision support. Yet making AI explainable to non-technical end-users is a relatively ignored and challenging problem. To bridge the gap, we first identify twelve end-user-friendly explanatory forms that do not require technical knowledge to comprehend, including feature-, example-, and rule-based explanations. We then instantiate the explanatory forms as prototyping cards in four AI-assisted critical decision-making tasks, and conduct a user study to co-design low-fidelity prototypes with 32 layperson participants. The results confirm the relevance of using explanatory forms as building blocks of explanations, and identify their proprieties - pros, cons, applicable explanation goals, and design implications. The explanatory forms, their proprieties, and prototyping supports (including a suggested prototyping process, design templates and exemplars, and associated algorithms to actualize explanatory forms) constitute the End-User-Centered explainable AI framework EUCA, and is available at http://weinajin.github.io/end-user-xai . It serves as a practical prototyping toolkit for HCI/AI practitioners and researchers to understand user requirements and build end-user-centered explainable AI.

Keywords

Cite

@article{arxiv.2102.02437,
  title  = {EUCA: the End-User-Centered Explainable AI Framework},
  author = {Weina Jin and Jianyu Fan and Diane Gromala and Philippe Pasquier and Ghassan Hamarneh},
  journal= {arXiv preprint arXiv:2102.02437},
  year   = {2022}
}

Comments

EUCA Framework, EUCA dataset (and accompanying code), and Supplementary Materials are available at: https://github.com/weinajin/end-user-xai

R2 v1 2026-06-23T22:49:28.838Z