Rationale discovery and explainable AI

Publication date

2021

Authors

Steging, Cor
Renooij, SiljaORCID 0000-0003-4339-8146ISNI 0000000396172124
Verheij, Bart

Editors

Schweighofer , Erich

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by_nc

Abstract

The justification of an algorithm’s outcomes is important in many domains, and in particular in the law. However, previous research has shown that machine learning systems can make the right decisions for the wrong reasons: despite high accuracies, not all of the conditions that define the domain of the training data are learned. In this study, we investigate what the system does learn, using state-of-the-art explainable AI techniques. With the use of SHAP and LIME, we are able to show which features impact the decision making process and how the impact changes with different distributions of the training data. However, our results also show that even high accuracy and good relevant feature detection are no guarantee for a sound rationale. Hence these state-of-the-art explainable AI techniques cannot be used to fully expose unsound rationales, further advocating the need for a separate method for rationale evaluation.

Keywords

Machine Learning, Explainable AI, Knowledge, Data

Citation

Steging, C, Renooij, S & Verheij, B 2021, Rationale discovery and explainable AI. in E Schweighofer (ed.), Legal Knowledge and Information Systems. Frontiers in Artificial Intelligence and Applications, vol. 346, IOS Press, pp. 225-234. https://doi.org/10.3233/FAIA210341