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Contraction and uniform convergence of isotonic regression

Electronic Journal of Statistics (EJS), 2017
Abstract

We consider the problem of isotonic regression, where the underlying signal xx is assumed to satisfy a monotonicity constraint, that is, xx lies in the cone {xRn:x1xn}\{ x\in\mathbb{R}^n : x_1 \leq \dots \leq x_n\}. We study the isotonic projection operator (projection to this cone), and find a necessary and sufficient condition characterizing all norms with respect to which this projection is contractive. This enables a simple and non-asymptotic analysis of the convergence properties of isotonic regression, yielding uniform confidence bands that adapt to the local Lipschitz properties of the signal.

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