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Automated Learning of Interpretable Models with Quantified Uncertainty

Authors :
Bomarito, G. F.
Leser, P. E.
Strauss, N. C. M
Garbrecht, K. M.
Hochhalter, J. D.
Publication Year :
2022

Abstract

Interpretability and uncertainty quantification in machine learning can provide justification for decisions, promote scientific discovery and lead to a better understanding of model behavior. Symbolic regression provides inherently interpretable machine learning, but relatively little work has focused on the use of symbolic regression on noisy data and the accompanying necessity to quantify uncertainty. A new Bayesian framework for genetic-programming-based symbolic regression (GPSR) is introduced that uses model evidence (i.e., marginal likelihood) to formulate replacement probability during the selection phase of evolution. Model parameter uncertainty is automatically quantified, enabling probabilistic predictions with each equation produced by the GPSR algorithm. Model evidence is also quantified in this process, and its use is shown to increase interpretability, improve robustness to noise, and reduce overfitting when compared to a conventional GPSR implementation on both numerical and physical experiments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2205.01626
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.cma.2022.115732