Explanation-Driven Interventions for Artificial Intelligence Model Customization: Empowering End-Users to Tailor Black-Box AI in Rhinocytology
Explanation-Driven Interventions for Artificial Intelligence Model Customization: Empowering End-Users to Tailor Black-Box AI in Rhinocytology
The integration of Artificial Intelligence (AI) in modern society is transforming how individuals perform tasks. In high-risk domains, ensuring human control over AI systems remains a key design challenge. This article presents a novel End-User Development (EUD) approach for black-box AI models, enabling users to edit explanations and influence future predictions through targeted interventions. By combining explainability, user control, and model adaptability, the proposed method advances Human-Centered AI (HCAI), promoting a symbiotic relationship between humans and adaptive, user-tailored AI systems.
Andrea Esposito、Miriana Calvano、Antonio Curci、Francesco Greco、Rosa Lanzilotti、Antonio Piccinno
University of Bari Aldo MoroUniversity of Bari Aldo MoroUniversity of Bari Aldo MoroUniversity of Bari Aldo MoroUniversity of Bari Aldo MoroUniversity of Bari Aldo Moro
计算技术、计算机技术
Andrea Esposito,Miriana Calvano,Antonio Curci,Francesco Greco,Rosa Lanzilotti,Antonio Piccinno.Explanation-Driven Interventions for Artificial Intelligence Model Customization: Empowering End-Users to Tailor Black-Box AI in Rhinocytology[EB/OL].(2025-04-07)[2025-05-23].https://arxiv.org/abs/2504.04833.点此复制
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