Minimax Risk Bounds for Piecewise Constant Models

Consider a sequence of data points whose underlying mean is piecewise constant of at most pieces. This paper establishes sharp nonasymptotic risk bounds for the least squares estimator (LSE) on estimating . The main results are twofold. First, when there is no additional shape constraint assumed, we reveal a new phase transition for the risk of LSE: As increases from 2 to higher, the rate changes from to . Secondly, when is further assumed to be nondecreasing, we show the rate is improved to be over . These bounds are sharp in the sense that they match the minimax lower bounds of the studied problems (without sacrificing any logarithmic factor). They complement their counterpart in the change-point detection literature and fill some notable gaps in recent discoveries relating isotonic regression to piecewise constant models. The techniques developed in the proofs, which are built on Levy's partial sum and Doob's martingale theory, are of independent interest and may have potential applications to the study of some other shape-constrained regression problems.
View on arXiv