高维回归中变量选择的一个简单信息准则。

IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Statistics in Medicine Pub Date : 2025-01-15 Epub Date: 2024-12-12 DOI:10.1002/sim.10275
Matthieu Pluntz, Cyril Dalmasso, Pascale Tubert-Bitter, Ismaïl Ahmed
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引用次数: 0

摘要

高维回归问题,例如基因组或药物暴露数据,通常涉及稀疏回归量集的自动选择。像LASSO这样的惩罚回归方法可以提供一系列候选稀疏模型。要选择一个,有平衡对数似然和模型大小的标准,最常见的是AIC和BIC。这两种方法没有考虑到在高维回归中选择变量时执行的隐式多重测试,这使得它们过于自由。提出了一种新的用于高维回归稀疏模型选择的信息准则——扩展AIC (EAIC)。当候选回归量是独立的时,它允许渐近FWER控制。它基于一个简单的公式,涉及模型对数似然、模型大小、候选回归量的总数和FWER目标。在广泛的线性和逻辑回归设置的模拟研究中,我们结合LASSO评估了EAIC和其他信息标准(包括一些也使用候选回归量的标准:mBIC、mAIC和EBIC)的变量选择性能。与AIC和BIC相比,我们的方法在几乎所有设置下都控制了FWER,而AIC和BIC会产生许多误报。我们还举例说明了法国药物警戒自发报告数据库上药物不良反应的自动信号检测。
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A Simple Information Criterion for Variable Selection in High-Dimensional Regression.

High-dimensional regression problems, for example with genomic or drug exposure data, typically involve automated selection of a sparse set of regressors. Penalized regression methods like the LASSO can deliver a family of candidate sparse models. To select one, there are criteria balancing log-likelihood and model size, the most common being AIC and BIC. These two methods do not take into account the implicit multiple testing performed when selecting variables in a high-dimensional regression, which makes them too liberal. We propose the extended AIC (EAIC), a new information criterion for sparse model selection in high-dimensional regressions. It allows for asymptotic FWER control when the candidate regressors are independent. It is based on a simple formula involving model log-likelihood, model size, the total number of candidate regressors, and the FWER target. In a simulation study over a wide range of linear and logistic regression settings, we assessed the variable selection performance of the EAIC and of other information criteria (including some that also use the number of candidate regressors: mBIC, mAIC, and EBIC) in conjunction with the LASSO. Our method controls the FWER in nearly all settings, in contrast to the AIC and BIC, which produce many false positives. We also illustrate it for the automated signal detection of adverse drug reactions on the French pharmacovigilance spontaneous reporting database.

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来源期刊
Statistics in Medicine
Statistics in Medicine 医学-公共卫生、环境卫生与职业卫生
CiteScore
3.40
自引率
10.00%
发文量
334
审稿时长
2-4 weeks
期刊介绍: The journal aims to influence practice in medicine and its associated sciences through the publication of papers on statistical and other quantitative methods. Papers will explain new methods and demonstrate their application, preferably through a substantive, real, motivating example or a comprehensive evaluation based on an illustrative example. Alternatively, papers will report on case-studies where creative use or technical generalizations of established methodology is directed towards a substantive application. Reviews of, and tutorials on, general topics relevant to the application of statistics to medicine will also be published. The main criteria for publication are appropriateness of the statistical methods to a particular medical problem and clarity of exposition. Papers with primarily mathematical content will be excluded. The journal aims to enhance communication between statisticians, clinicians and medical researchers.
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