Treffer: Symbolic Imitation Learning: From Black-Box to Explainable Driving Policies

Title:
Symbolic Imitation Learning: From Black-Box to Explainable Driving Policies
Source:
Applied Sciences, Vol 15, Iss 23, p 12464 (2025)
Publisher Information:
MDPI AG, 2025.
Publication Year:
2025
Collection:
LCC:Technology
LCC:Engineering (General). Civil engineering (General)
LCC:Biology (General)
LCC:Physics
LCC:Chemistry
Document Type:
Fachzeitschrift article
File Description:
electronic resource
Language:
English
ISSN:
2076-3417
DOI:
10.3390/app152312464
Accession Number:
edsdoj.01309ac2a5e84f45bc3b0deb84f1de9d
Database:
Directory of Open Access Journals

Weitere Informationen

Current imitation learning approaches, predominantly based on deep neural networks (DNNs), offer efficient mechanisms for learning driving policies from real-world datasets. However, they suffer from inherent limitations in interpretability and generalizability—issues of critical importance in safety-critical domains such as autonomous driving. In this paper, we introduce Symbolic Imitation Learning (SIL), a novel framework that leverages Inductive Logic Programming (ILP) to derive explainable and generalizable driving policies from synthetic datasets. We evaluate SIL on real-world HighD and NGSim datasets, comparing its performance with state-of-the-art neural imitation learning methods using metrics such as collision rate, lane change efficiency, and average speed. The results indicate that SIL significantly enhances policy transparency while maintaining strong performance across varied driving conditions. These findings highlight the potential of integrating ILP into imitation learning to promote safer and more reliable autonomous systems.