English

LASSO ISOtone for High Dimensional Additive Isotonic Regression

Methodology 2010-06-16 v1 Computation Machine Learning

Abstract

Additive isotonic regression attempts to determine the relationship between a multi-dimensional observation variable and a response, under the constraint that the estimate is the additive sum of univariate component effects that are monotonically increasing. In this article, we present a new method for such regression called LASSO Isotone (LISO). LISO adapts ideas from sparse linear modelling to additive isotonic regression. Thus, it is viable in many situations with high dimensional predictor variables, where selection of significant versus insignificant variables are required. We suggest an algorithm involving a modification of the backfitting algorithm CPAV. We give a numerical convergence result, and finally examine some of its properties through simulations. We also suggest some possible extensions that improve performance, and allow calculation to be carried out when the direction of the monotonicity is unknown.

Keywords

Cite

@article{arxiv.1006.2940,
  title  = {LASSO ISOtone for High Dimensional Additive Isotonic Regression},
  author = {Zhou Fang and Nicolai Meinshausen},
  journal= {arXiv preprint arXiv:1006.2940},
  year   = {2010}
}
R2 v1 2026-06-21T15:36:23.189Z