Multiple Imputation Based on Conditional Quantile Estimation

Q3 Nursing
M. Bottai, H. Zhen
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引用次数: 5

Abstract

Multiple imputation is a simulation-based approach for the analysis of data with missing observations. It is widely utilized in many set- tings and preeminent among general approaches when the analytical method does not involve a likelihood function or this is too complex. We consider a multiple imputation method based on the estimation of conditional quantiles of missing observations given the observed data. The method does not require modeling a likelihood and has desirable features that may be useful in some practical settings. It can also be applied to impute dependent, bounded, censored and count data. In a simulation study it shows some advantage over the alternative meth- ods considered in terms of mean squared error across all scenarios except when the data arise from a normal distribution where all meth- ods considered perform equally well. We present an application to the estimation of percentiles of body mass index conditional on physical activity assessed by accelerometers.
基于条件分位数估计的多重插值
多重插值是一种基于模拟的方法,用于分析缺失观测值的数据。当分析方法不涉及似然函数或过于复杂时,它在许多情况下被广泛使用,在一般方法中表现突出。在给定观测数据的情况下,我们考虑了一种基于缺失观测值条件分位数估计的多重插值方法。该方法不需要对可能性进行建模,并且具有在某些实际设置中可能有用的理想特征。它也可以应用于计算依赖的、有界的、删节的和计数的数据。在一项模拟研究中,除了数据来自正态分布的情况下,所有考虑的方法都表现得同样好,在所有情况下,它在均方误差方面比其他方法有一些优势。我们提出了一个应用,以估计身体质量指数的百分位数条件下的体力活动评估的加速度计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Epidemiology Biostatistics and Public Health
Epidemiology Biostatistics and Public Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
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期刊介绍: Epidemiology, Biostatistics, and Public Health (EBPH) is a multidisciplinary journal that has two broad aims: -To support the international public health community with publications on health service research, health care management, health policy, and health economics. -To strengthen the evidences on effective preventive interventions. -To advance public health methods, including biostatistics and epidemiology. EBPH welcomes submissions on all public health issues (including topics like eHealth, big data, personalized prevention, epidemiology and risk factors of chronic and infectious diseases); on basic and applied research in epidemiology; and in biostatistics methodology. Primary studies, systematic reviews, and meta-analyses are all welcome, as are research protocols for observational and experimental studies. EBPH aims to be a cross-discipline, international forum for scientific integration and evidence-based policymaking, combining the methodological aspects of epidemiology, biostatistics, and public health research with their practical applications.
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