A study on the least squares estimator of multivariate isotonic regression function |
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Authors: | Pramita Bagchi Subhra Sankar Dhar |
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Affiliation: | 1. Department of Statistics, George Mason University, Fairfax, Virginia, USA;2. Department of Mathematics and Statistics, IIT Kanpur |
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Abstract: | Consider the problem of pointwise estimation of f in a multivariate isotonic regression model Z=f(X1,…,Xd)+ϵ, where Z is the response variable, f is an unknown nonparametric regression function, which is isotonic with respect to each component, and ϵ is the error term. In this article, we investigate the behavior of the least squares estimator of f. We generalize the greatest convex minorant characterization of isotonic regression estimator for the multivariate case and use it to establish the asymptotic distribution of properly normalized version of the estimator. Moreover, we test whether the multivariate isotonic regression function at a fixed point is larger (or smaller) than a specified value or not based on this estimator, and the consistency of the test is established. The practicability of the estimator and the test are shown on simulated and real data as well. |
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Keywords: | consistency convex function cumulative sum diagram nonstandard asymptotic distribution rate of convergence |
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