Robust improvement of efficiency using information on covariate distribution.

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY Electronic Journal of Statistics Pub Date : 2024-01-01 Epub Date: 2024-11-22 DOI:10.1214/24-ejs2311
Lu Mao
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Abstract

The marginal inference of an outcome variable can be improved by closely related covariates with a structured distribution. This differs from standard covariate adjustment in randomized trials, which exploits covariate-treatment independence rather than knowledge on the covariate distribution. Yet it can also be done robustly against misspecification of the outcome-covariate relationship. Starting with a standard estimating function involving only the outcome, we first use a working regression model to compute its conditional expectation given the covariates, and then remove the uninformative part under the covariate distribution model. This effectively projects the initial function onto the joint tangent space of the full data, thereby achieving local efficiency when the regression model is correct. Importantly, even with a faulty working model, the estimator remains unbiased as the subtracted term is always asymptotically centered. Further improvement is possible if the outcome distribution also has its own structure. To demonstrate the process, we consider three examples: one with fully parametric covariates, one with a covariate following a partial parametric model against others, and another with mutually independent covariates.

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利用协变量分布信息的鲁棒性效率改进。
结果变量的边际推断可以通过具有结构化分布的密切相关协变量来改进。这与随机试验中的标准协变量调整不同,随机试验利用协变量处理独立性,而不是对协变量分布的了解。然而,它也可以健壮地防止结果-协变量关系的错误说明。从一个只涉及结果的标准估计函数开始,我们首先使用一个工作回归模型来计算给定协变量的条件期望,然后在协变量分布模型下去除非信息部分。这有效地将初始函数投影到全数据的联合切线空间上,从而在回归模型正确的情况下实现局部效率。重要的是,即使有一个错误的工作模型,估计量仍然是无偏的,因为减去的项总是渐近中心。如果结果分布也有自己的结构,进一步的改进是可能的。为了演示这个过程,我们考虑了三个例子:一个是全参数协变量,一个是部分参数模型的协变量,另一个是相互独立的协变量。
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来源期刊
Electronic Journal of Statistics
Electronic Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
9.10%
发文量
100
审稿时长
3 months
期刊介绍: The Electronic Journal of Statistics (EJS) publishes research articles and short notes on theoretical, computational and applied statistics. The journal is open access. Articles are refereed and are held to the same standard as articles in other IMS journals. Articles become publicly available shortly after they are accepted.
期刊最新文献
Regression analysis of semiparametric Cox-Aalen transformation models with partly interval-censored data. Direct Bayesian linear regression for distribution-valued covariates. Robust improvement of efficiency using information on covariate distribution. Statistical inference via conditional Bayesian posteriors in high-dimensional linear regression Subnetwork estimation for spatial autoregressive models in large-scale networks
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