Quadratic Programming and Penalized Regression |
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Authors: | Andrew D. A. C. Smith |
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Affiliation: | 1. School of Mathematics , University of Bristol , Clifton , Bristol , United Kingdom Andrew.D.Smith@bristol.ac.uk |
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Abstract: | Quadratic programming is a versatile tool for calculating estimates in penalized regression. It can be used to produce estimates based on L 1 roughness penalties, as in total variation denoising. In particular, it can calculate estimates when the roughness penalty is the total variation of a derivative of the estimate. Combining two roughness penalties, the total variation and total variation of the third derivative, results in an estimate with continuous second derivative but controls the number of spurious local extreme values. A multiresolution criterion may be included in a quadratic program to achieve local smoothing without having to specify smoothing parameters. |
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Keywords: | Multiresolution Nonparametric regression Penalized regression Quadratic programming Total variation |
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