Regularization of a Parameter Estimation Problem using Monotonicity and Convexity Constraints
ESAIM. Proceedings, Tome 57 (2017), pp. 86-96
In marine science, it is usually assumed that there is a functional relationship between the parental population size and subsequent offsprings. The function is referred to as the Stock Recruitment Function (SRF). Determining the SRF translates to the optimization problem of estimating a set of parameters using past and sparse observation, which are usually of modest accuracy. The problem is challenging because several candidate functions exist in the literature, and the choice of best function is non-trivial, due to data sparsity and uncertainty.This paper formulates the problem as a constrained optimization task, and uses B-spline basis functions to represent the functional family to which the SRF belongs. Regularized solutions are obtained by requiring that the derived functions are both monotone and convex.The approach presents two major contributions to the existing computational challenges: • It avoids the non-trivial problem of choosing the functional form a priori. • Regularization of the problem using constraints ensures that parameter estimates are realistic. Numerical examples are presented to compare ℓ1 and ℓ2-norm solutions.
@article{EP_2017_57_a8,
author = {Sam Subbey},
title = {Regularization of a {Parameter} {Estimation} {Problem} using {Monotonicity} and {Convexity} {Constraints}},
journal = {ESAIM. Proceedings},
pages = {86--96},
year = {2017},
volume = {57},
doi = {10.1051/proc/201657086},
language = {en},
url = {http://geodesic.mathdoc.fr/articles/10.1051/proc/201657086/}
}
TY - JOUR AU - Sam Subbey TI - Regularization of a Parameter Estimation Problem using Monotonicity and Convexity Constraints JO - ESAIM. Proceedings PY - 2017 SP - 86 EP - 96 VL - 57 UR - http://geodesic.mathdoc.fr/articles/10.1051/proc/201657086/ DO - 10.1051/proc/201657086 LA - en ID - EP_2017_57_a8 ER -
Sam Subbey. Regularization of a Parameter Estimation Problem using Monotonicity and Convexity Constraints. ESAIM. Proceedings, Tome 57 (2017), pp. 86-96. doi: 10.1051/proc/201657086
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