Article ID Journal Published Year Pages File Type
418077 Computational Statistics & Data Analysis 2007 12 Pages PDF
Abstract

Algorithms for the estimation of nonlinear regression parameters are considered. Adaptive population-based search algorithms are proposed and implemented in deriving reliable estimates at a reasonable time with default setting of their controlling parameters. The algorithms are tested on the NIST collection of data sets containing 27 nonlinear regression tasks of various level of difficulty. The experimental results show that both algorithms with competing heuristics are significantly more reliable as compared with the algorithm based on Levenberg–Marquardt optimizing procedure.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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