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Adaptive risk bounds in unimodal regression

机译:单峰回归中的自适应风险限制

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摘要

We study the statistical properties of the least squares estimator in unimodal sequence estimation. Although closely related to isotonic regression, unimodal regression has not been as extensively studied. We show that the unimodal least squares estimator is adaptive in the sense that the risk scales as a function of the number of values in the true underlying sequence. Such adaptivity properties have been shown for isotonic regression by Chatterjee et al. (Ann. Statist. 43 (2015) 1774-1800) and Bellec (Sharp oracle inequalities for Least Squares estimators in shape restricted regression (2016)). A technical complication in unimodal regression is the non-convexity of the underlying parameter space. We develop a general variational representation of the risk that holds whenever the parameter space can be expressed as a finite union of convex sets, using techniques that may be of interest in other settings.
机译:我们研究了单峰序列估计中最小二乘估计的统计特性。 虽然与等渗回归密切相关,但单峰回归尚未广泛研究。 我们表明,单向最小二乘估计器是在风险缩放的意义上自适应,因为风险缩放是真实序列中的值的值的函数。 已经显示了这种适应性特性,以Chatterjee等人进行了等渗回归。 (ANN。统计部。43(2015)1774-1800)和Bellec(夏普甲骨质不等式,最小二乘估计形状受限回归(2016))。 单向回归的技术并发症是底层参数空间的非凸起。 我们开发了一般的变分,可以在参数空间可以表达为凸集的有限联合时,使用可能对其他设置感兴趣的技术表示作为凸集的有限联合。

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