Research

IROF: a low resource evaluation metric for explanation methods

Abstract

The adoption of machine learning in health care hinges on the transparency of the used algorithms, necessitating the need for explanation methods. However, despite a growing literature on explaining neural networks, no consensus has been reached on how to evaluate those explanation methods. We propose IROF, a new approach to evaluating explanation methods that circumvents the need for manual evaluation. Compared to other recent work, our approach requires several orders of magnitude less computational resources and no human input, making it accessible to lower resource groups and robust to human bias.

Info

Conference Paper, 2020

UN SDG Classification
DK Main Research Area

    Science/Technology

To navigate
Press Enter to select