A UNIFIED STUDY OF NONPARAMETRIC INFERENCE FOR MONOTONE FUNCTIONS.

IF 3.2 1区 数学 Q1 STATISTICS & PROBABILITY Annals of Statistics Pub Date : 2020-04-01 Epub Date: 2020-05-26 DOI:10.1214/19-aos1835
Ted Westling, Marco Carone
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Abstract

The problem of nonparametric inference on a monotone function has been extensively studied in many particular cases. Estimators considered have often been of so-called Grenander type, being representable as the left derivative of the greatest convex minorant or least concave majorant of an estimator of a primitive function. In this paper, we provide general conditions for consistency and pointwise convergence in distribution of a class of generalized Grenander-type estimators of a monotone function. This broad class allows the minorization or majoratization operation to be performed on a data-dependent transformation of the domain, possibly yielding benefits in practice. Additionally, we provide simpler conditions and more concrete distributional theory in the important case that the primitive estimator and data-dependent transformation function are asymptotically linear. We use our general results in the context of various well-studied problems, and show that we readily recover classical results established separately in each case. More importantly, we show that our results allow us to tackle more challenging problems involving parameters for which the use of flexible learning strategies appears necessary. In particular, we study inference on monotone density and hazard functions using informatively right-censored data, extending the classical work on independent censoring, and on a covariate-marginalized conditional mean function, extending the classical work on monotone regression functions.

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单调函数非参数推断的统一研究。
关于单调函数的非参数推断问题,已经在许多特定情况下进行了广泛研究。所考虑的估计子通常是所谓的格勒南德类型,可表示为原始函数估计子的最大凸小值或最小凹大值的左导数。在本文中,我们提供了一类单调函数的广义格勒南德型估计子在分布上的一致性和点收敛性的一般条件。这一大类估计器允许在依赖数据的域变换上执行小化或大化操作,这可能会在实践中产生好处。此外,在原始估计器和依赖数据的变换函数渐近线性的重要情况下,我们提供了更简单的条件和更具体的分布理论。我们将我们的一般结果用于各种已被充分研究的问题,并证明我们很容易恢复在每种情况下分别建立的经典结果。更重要的是,我们证明了我们的结果使我们能够解决涉及参数的更具挑战性的问题,对于这些问题,似乎有必要使用灵活的学习策略。特别是,我们研究了使用信息右删失数据的单调密度和危险函数推断,扩展了关于独立删失的经典研究;我们还研究了协变量边际化条件均值函数推断,扩展了关于单调回归函数的经典研究。
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来源期刊
Annals of Statistics
Annals of Statistics 数学-统计学与概率论
CiteScore
9.30
自引率
8.90%
发文量
119
审稿时长
6-12 weeks
期刊介绍: The Annals of Statistics aim to publish research papers of highest quality reflecting the many facets of contemporary statistics. Primary emphasis is placed on importance and originality, not on formalism. The journal aims to cover all areas of statistics, especially mathematical statistics and applied & interdisciplinary statistics. Of course many of the best papers will touch on more than one of these general areas, because the discipline of statistics has deep roots in mathematics, and in substantive scientific fields.
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