This paper presents a hypothesis-driven approach to improve AI-supported decision-making that is based on the Evaluative AI paradigm - a conceptual framework that proposes providing users with evidence for or against a given hypothesis. We propose an implementation of Evaluative AI by extending the Weight of Evidence framework, leading to hypothesis-driven models that support both tabular and image data. We demonstrate the application of the new decision-support approach in two domains: housing price prediction and skin cancer diagnosis. The findings show promising results in improving human decisions, as well as providing insights on the strengths and weaknesses of different decision-support approaches.
@article{arxiv.2402.01292,
title = {From Evidence to Decision: Exploring Evaluative AI},
author = {Thao Le and Tim Miller and Liz Sonenberg and Ronal Singh and H. Peter Soyer},
journal= {arXiv preprint arXiv:2402.01292},
year = {2025}
}
Comments
This paper is an extension of a prior work that was published at ECAI 2024 and is currently under review at a journal