SEARCH

SEARCH BY CITATION

Cited in:

CrossRef

This article has been cited by:

  1. 1
    Juho Kopra, Tommi Härkänen, Hanna Tolonen, Juha Karvanen, Correcting for non-ignorable missingness in smoking trends, Stat, 2015, 4, 1
  2. 2
    Fei Wang, Peter X.-K. Song, Lu Wang, Merging multiple longitudinal studies with study-specific missing covariates: A joint estimating function approach, Biometrics, 2015, 71, 2
  3. 3
    Michael Schomaker, Sara Hogger, Leigh F. Johnson, Christopher J. Hoffmann, Till Bärnighausen, Christian Heumann, Simultaneous Treatment of Missing Data and Measurement Error in HIV Research Using Multiple Overimputation, Epidemiology, 2015, 26, 5, 628

    CrossRef

  4. 4
    Nanhua Zhang, Roderick J. Little, Subsample ignorable likelihood for accelerated failure time models with missing predictors, Lifetime Data Analysis, 2015, 21, 3, 457

    CrossRef

  5. 5
    Peng Ding, Zhi Geng, Identifiability of subgroup causal effects in randomized experiments with nonignorable missing covariates, Statistics in Medicine, 2014, 33, 7
  6. 6
    J. W. Bartlett, J. R. Carpenter, K. Tilling, S. Vansteelandt, Improving upon the efficiency of complete case analysis when covariates are MNAR, Biostatistics, 2014, 15, 4, 719

    CrossRef

  7. 7
    Charles W. Lidz, Camilla Marie Benedicto, Karen Albert, Paul S. Appelbaum, Laura B. Dunn, Clinical Concerns and the Validity of Clinical Trials, AJOB Primary Research, 2013, 4, 4, 26

    CrossRef

  8. 8
    Wim Van der Elst, Geert Molenberghs, Martin P. J. Van Boxtel, Jelle Jolles, Establishing normative data for repeated cognitive assessment: A comparison of different statistical methods, Behavior Research Methods, 2013, 45, 4, 1073

    CrossRef

  9. 9
    A. Hiyoshi, Y. Fukuda, M. J. Shipley, E. J. Brunner, Inequalities in self-rated health in Japan 1986-2007 according to household income and a novel occupational classification: national sampling survey series, Journal of Epidemiology & Community Health, 2013, 67, 11, 960

    CrossRef

  10. 10
    Nanhua Zhang, Roderick J. Little, A Pseudo-Bayesian Shrinkage Approach to Regression with Missing Covariates, Biometrics, 2012, 68, 3