Back to Search Start Over

Unveiling the Decision-Making Process in Reinforcement Learning with Genetic Programming

Authors :
Eberhardinger, Manuel
Rupp, Florian
Maucher, Johannes
Maghsudi, Setareh
Publication Year :
2024

Abstract

Despite tremendous progress, machine learning and deep learning still suffer from incomprehensible predictions. Incomprehensibility, however, is not an option for the use of (deep) reinforcement learning in the real world, as unpredictable actions can seriously harm the involved individuals. In this work, we propose a genetic programming framework to generate explanations for the decision-making process of already trained agents by imitating them with programs. Programs are interpretable and can be executed to generate explanations of why the agent chooses a particular action. Furthermore, we conduct an ablation study that investigates how extending the domain-specific language by using library learning alters the performance of the method. We compare our results with the previous state of the art for this problem and show that we are comparable in performance but require much less hardware resources and computation time.<br />Comment: Accepted at: The Fifteenth International Conference on Swarm Intelligence (ICSI'2024)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.14714
Document Type :
Working Paper