A comparison of posterior simulation and inference by combining rules for multiple imputation

被引:8
|
作者
Si Y. [1 ]
Reiter J.P. [1 ]
机构
[1] Department of Statistical Science, Duke University, Durham
基金
美国国家科学基金会;
关键词
Bayesian; Confidentiality; Missing; Synthetic;
D O I
10.1080/15598608.2011.10412032
中图分类号
学科分类号
摘要
Multiple imputation is a common approach for handling missing data. It is also used by government agencies to protect confidential information in public use data files. One reason for the popularity of multiple imputation approaches is ease of use: Analysts make inferences by combining point and variance estimates with simple rules. These combining rules are based on method of moments approximations to full Bayesian inference. With modern computing, however, it is as easy to perform the full Bayesian inference as it is to combine point and variance estimates. This begs the question: Is there any advantage of using full Bayesian inference over multiple imputation combining rules? We use simulation studies to investigate this question. We find that, in general, the full Bayesian inference is not preferable to using the combining rules in multiple imputation for missing data. The full Bayesian inference can have advantages over the combining rules when using multiple imputation to protect confidential information. © 2011 Copyright Taylor and Francis Group, LLC.
引用
收藏
页码:335 / 347
页数:12
相关论文
共 50 条
  • [41] INFERENCE FROM COARSE DATA VIA MULTIPLE IMPUTATION WITH APPLICATION TO AGE HEAPING
    HEITJAN, DF
    RUBIN, DB
    [J]. JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 1990, 85 (410) : 304 - 314
  • [42] Latent class regression: Inference and estimation with two-stage multiple imputation
    Harel, Ofer
    Chung, Hwan
    Miglioretti, Diana
    [J]. BIOMETRICAL JOURNAL, 2013, 55 (04) : 541 - 553
  • [43] Comparison of Different Methods for Multiple Imputation by Chain Equation
    Grigorova, Denitsa
    Tonchev, Demir
    Palejev, Dean
    [J]. LARGE-SCALE SCIENTIFIC COMPUTING (LSSC 2021), 2022, 13127 : 439 - 446
  • [44] A comparison of strategies for selecting auxiliary variables for multiple imputation
    Mainzer, Rheanna M.
    Nguyen, Cattram D.
    Carlin, John B.
    Moreno-Betancur, Margarita
    White, Ian R.
    Lee, Katherine J.
    [J]. BIOMETRICAL JOURNAL, 2024, 66 (01)
  • [45] Premature ventricular contraction detection combining deep neural networks and rules inference
    Zhou, Fei-yan
    Jin, Lin-peng
    Dong, Jun
    [J]. ARTIFICIAL INTELLIGENCE IN MEDICINE, 2017, 79 : 42 - 51
  • [46] Combining multiple imputation and bootstrap in the analysis of cost-effectiveness trial data
    Brand, Jaap
    van Buuren, Stef
    le Cessie, Saskia
    van den Hout, Wilbert
    [J]. STATISTICS IN MEDICINE, 2019, 38 (02) : 210 - 220
  • [47] Assessment of predictive performance in incomplete data by combining internal validation and multiple imputation
    Wahl, Simone
    Boulesteix, Anne-Laure
    Zierer, Astrid
    Thorand, Barbara
    de Wiel, Mark Avan
    [J]. BMC MEDICAL RESEARCH METHODOLOGY, 2016, 16 : 1 - 18
  • [48] Assessment of predictive performance in incomplete data by combining internal validation and multiple imputation
    Simone Wahl
    Anne-Laure Boulesteix
    Astrid Zierer
    Barbara Thorand
    Mark A. van de Wiel
    [J]. BMC Medical Research Methodology, 16
  • [49] Imputation and quality control steps for combining multiple genome-wide datasets
    Verma, Shefali S.
    de Andrade, Mariza
    Tromp, Gerard
    Kuivaniemi, Helena
    Pugh, Elizabeth
    Namjou-Khales, Bahram
    Mukherjee, Shubhabrata
    Jarvik, Gail P.
    Kottyan, Leah C.
    Burt, Amber
    Bradford, Yuki
    Armstrong, Gretta D.
    Derr, Kimberly
    Crawford, Dana C.
    Haines, Jonathan L.
    Li, Rongling
    Crosslin, David
    Ritchie, Marylyn D.
    [J]. FRONTIERS IN GENETICS, 2014, 5
  • [50] Combining Item Response Theory with Multiple Imputation to Equate Health Assessment Questionnaires
    Gu, Chenyang
    Gutman, Roee
    [J]. BIOMETRICS, 2017, 73 (03) : 990 - 998