Title of article :
A Dual Active-Set Algorithm for Regularized Slope-Constrained Monotonic Regression
Author/Authors :
Burdakov, O Department of Mathematics - Linkӧping University, Linkӧping, Sweden , Sysoev, O Department of Computer and Information Science - Linkӧping University, Linkӧping, Sweden
Abstract :
In many problems, it is necessary to take into account monotonic relations. Monotonic (isotonic)
Regression (MR) is often involved in solving such problems. The MR solutions are of a step-shaped
form with a typical sharp change of values between adjacent steps. This, in some applications, is
regarded as a disadvantage. We recently introduced a Smoothed MR (SMR) problem which is
obtained from the MR by adding a regularization penalty term. The SMR is aimed at smoothing
the aforementioned sharp change. Moreover, its solution has a far less pronounced step-structure,
if at all available. The purpose of this paper is to further improve the SMR solution by getting rid
of such a structure. This is achieved by introducing a lowed bound on the slope in the SMR. We
call it Smoothed Slope-Constrained MR (SSCMR) problem. It is shown here how to reduce it to the
SMR which is a convex quadratic optimization problem. The Smoothed Pool Adjacent Violators
(SPAV) algorithm developed in our recent publications for solving the SMR problem is adapted
here to solving the SSCMR problem. This algorithm belongs to the class of dual active-set
algorithms. Although the complexity of the SPAV algorithm is 𝑂(𝑛2), its running time is growing
in our computational experiments almost linearly with 𝑛. We present numerical results which
illustrate the predictive performance quality of our approach. They also show that the SSCMR
solution is free of the undesirable features of the MR and SMR solutions.
Keywords :
Large-scale optimization , Dual active-set method , Convex quadratic optimization , Quadratic penalty , Monotonic regression , Regularization
Journal title :
Astroparticle Physics