Towards an Evaluation Framework for Explainable Artificial Intelligence Systems for Health and Well-being
By: Esperança Amengual-Alcover , Antoni Jaume-i-Capó , Miquel Miró-Nicolau and more
Potential Business Impact:
Helps doctors trust computer health advice.
The integration of Artificial Intelligence in the development of computer systems presents a new challenge: make intelligent systems explainable to humans. This is especially vital in the field of health and well-being, where transparency in decision support systems enables healthcare professionals to understand and trust automated decisions and predictions. To address this need, tools are required to guide the development of explainable AI systems. In this paper, we introduce an evaluation framework designed to support the development of explainable AI systems for health and well-being. Additionally, we present a case study that illustrates the application of the framework in practice. We believe that our framework can serve as a valuable tool not only for developing explainable AI systems in healthcare but also for any AI system that has a significant impact on individuals.
Similar Papers
A Systematic Review of User-Centred Evaluation of Explainable AI in Healthcare
Human-Computer Interaction
Helps doctors trust AI by testing how it explains things.
Evaluating Explainability: A Framework for Systematic Assessment and Reporting of Explainable AI Features
Artificial Intelligence
Checks if AI's "thinking" makes sense.
Assessing AI Explainability: A Usability Study Using a Novel Framework Involving Clinicians
Human-Computer Interaction
Helps doctors understand AI for better patient care.