TY - GEN
T1 - Enhanced Interpretability in Root Cause Analysis Using Structure-Template Symbolic Regression
AU - Haider, Christian Alexander
AU - Kern, Roman
AU - Zenisek, Jan
AU - Bachinger, Florian
N1 - Publisher Copyright:
© 2026 The Author(s).
PY - 2026
Y1 - 2026
N2 - Symbolic regression (SR) is a powerful method for creating interpretable models, but it often lacks functions to incorporate prior knowledge and to support root cause analysis. To address this problem, we propose Structure-Template Regression (STR), a method to integrate known structural components into symbolic regression. This allows for the generation of models that not only fit data well, but also reflect the desired behavior of the underlying system. We evaluated STR on two different problems, a hydrodynamic fluid problem of interconnected communicating vessels and a production logistic use case with multiple assembly lines, and show that STR is capable of generating accurate, interpretable models that adhere to integrated structures. Furthermore, we demonstrate that STR facilitates root cause analysis by enabling the tracing of error pathways within the model structure.
AB - Symbolic regression (SR) is a powerful method for creating interpretable models, but it often lacks functions to incorporate prior knowledge and to support root cause analysis. To address this problem, we propose Structure-Template Regression (STR), a method to integrate known structural components into symbolic regression. This allows for the generation of models that not only fit data well, but also reflect the desired behavior of the underlying system. We evaluated STR on two different problems, a hydrodynamic fluid problem of interconnected communicating vessels and a production logistic use case with multiple assembly lines, and show that STR is capable of generating accurate, interpretable models that adhere to integrated structures. Furthermore, we demonstrate that STR facilitates root cause analysis by enabling the tracing of error pathways within the model structure.
KW - Genetic Programming
KW - Interpretable Machine Learning
KW - Root Cause Analysis
KW - Structure-Template Regression
KW - Symbolic Regression
UR - https://www.scopus.com/pages/publications/105040225732
U2 - 10.1016/j.procs.2026.02.306
DO - 10.1016/j.procs.2026.02.306
M3 - Conference contribution
VL - 277
T3 - Procedia Computer Science
SP - 2689
EP - 2698
BT - 7th International Conference on Industry of the Future and Smart Manufacturing
PB - Elsevier
T2 - International Conference on Industry of the Future and Smart Manufacturing
Y2 - 12 November 2025 through 14 November 2025
ER -