具有高维妨害参数的一致有效因果推理的成本与收益

IF 3.9 1区 数学 Q1 STATISTICS & PROBABILITY
Niloofar Moosavi, J. Haggstrom, X. Luna
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引用次数: 7

摘要

最近,在开发程序方面取得了重要进展,当必须估计高维滋扰模型时,可以对低维因果参数进行一致有效的推断。在本文中,我们回顾了一致有效因果推理的文献,并讨论了使用一致有效推理程序的成本和收益。基于正则化、机器学习或滋扰模型的初步模型选择阶段的天真估计策略具有有限的样本分布,其渐近分布非常接近。为了解决这个严重的问题,文献中提出了在一类数据生成机制上分布一致收敛的估计量。为了在高维情况下获得一致有效的结果,通常需要为滋扰模型设定稀疏性条件,尽管具有双重鲁棒性,由此,如果滋扰模型中的一个更稀疏,则允许另一个滋扰模型不那么稀疏。虽然一致有效推理是一种非常理想的性质,但一致有效程序在膨胀的可变性方面付出了高昂的代价。我们对这一困境的讨论通过对双重选择结果回归估计量的研究来说明,我们证明了该估计量是一致渐近无偏的,但与数值实验中的一致有效估计量相比,其变量较小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Costs and Benefits of Uniformly Valid Causal Inference with High-Dimensional Nuisance Parameters
Important advances have recently been achieved in developing procedures yielding uniformly valid inference for a low dimensional causal parameter when high-dimensional nuisance models must be estimated. In this paper, we review the literature on uniformly valid causal inference and discuss the costs and benefits of using uniformly valid inference procedures. Naive estimation strategies based on regularisation, machine learning, or a preliminary model selection stage for the nuisance models have finite sample distributions which are badly approximated by their asymptotic distributions. To solve this serious problem, estimators which converge uniformly in distribution over a class of data generating mechanisms have been proposed in the literature. In order to obtain uniformly valid results in high-dimensional situations, sparsity conditions for the nuisance models need typically to be made, although a double robustness property holds, whereby if one of the nuisance model is more sparse, the other nuisance model is allowed to be less sparse. While uniformly valid inference is a highly desirable property, uniformly valid procedures pay a high price in terms of inflated variability. Our discussion of this dilemma is illustrated by the study of a double-selection outcome regression estimator, which we show is uniformly asymptotically unbiased, but is less variable than uniformly valid estimators in the numerical experiments conducted.
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来源期刊
Statistical Science
Statistical Science 数学-统计学与概率论
CiteScore
6.50
自引率
1.80%
发文量
40
审稿时长
>12 weeks
期刊介绍: The central purpose of Statistical Science is to convey the richness, breadth and unity of the field by presenting the full range of contemporary statistical thought at a moderate technical level, accessible to the wide community of practitioners, researchers and students of statistics and probability.
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