Improvements to the Levenberg-Marquardt algorithm for nonlinear least-squares minimization
read the original abstract
When minimizing a nonlinear least-squares function, the Levenberg-Marquardt algorithm can suffer from a slow convergence, particularly when it must navigate a narrow canyon en route to a best fit. On the other hand, when the least-squares function is very flat, the algorithm may easily become lost in parameter space. We introduce several improvements to the Levenberg-Marquardt algorithm in order to improve both its convergence speed and robustness to initial parameter guesses. We update the usual step to include a geodesic acceleration correction term, explore a systematic way of accepting uphill steps that may increase the residual sum of squares due to Umrigar and Nightingale, and employ the Broyden method to update the Jacobian matrix. We test these changes by comparing their performance on a number of test problems with standard implementations of the algorithm. We suggest that these two particular challenges, slow convergence and robustness to initial guesses, are complimentary problems. Schemes that improve convergence speed often make the algorithm less robust to the initial guess, and vice versa. We provide an open source implementation of our improvements that allow the user to adjust the algorithm parameters to suit particular needs.
This paper has not been read by Pith yet.
Forward citations
Cited by 3 Pith papers
-
Inferring Unreported Measurement Uncertainties via Information Geometry in Astrophysics
FIMER reconstructs effective measurement uncertainties in heterogeneous astrophysical data via weighted Fisher information geometry combined with detector-motivated priors such as Poisson and extreme-value distributions.
-
GATO: GPU-Accelerated and Batched Trajectory Optimization for Scalable Edge Model Predictive Control
GATO is a new batched GPU trajectory optimization solver that achieves real-time MPC throughput with 18-21x speedups over CPU baselines for tens to low-hundreds of simultaneous solves.
-
Extending OpenKIM with an Uncertainty Quantification Toolkit for Molecular Modeling
Introduces UQ extension to KLIFF using PTMCMC to quantify uncertainty from parameter variation and IP functional form inadequacy, demonstrated on Stillinger-Weber potential for silicon.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.