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An imputation–regularized optimization algorithm for high dimensional missing data problems and beyond

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  • Faming Liang
  • Bochao Jia
  • Jingnan Xue
  • Qizhai Li
  • Ye Luo

Abstract

Missing data are frequently encountered in high dimensional problems, but they are usually difficult to deal with by using standard algorithms, such as the expectation–maximization algorithm and its variants. To tackle this difficulty, some problem‐specific algorithms have been developed in the literature, but there still lacks a general algorithm. This work is to fill the gap: we propose a general algorithm for high dimensional missing data problems. The algorithm works by iterating between an imputation step and a regularized optimization step. At the imputation step, the missing data are imputed conditionally on the observed data and the current estimates of parameters and, at the regularized optimization step, a consistent estimate is found via the regularization approach for the minimizer of a Kullback–Leibler divergence defined on the pseudocomplete data. For high dimensional problems, the consistent estimate can be found under sparsity constraints. The consistency of the averaged estimate for the true parameter can be established under quite general conditions. The algorithm is illustrated by using high dimensional Gaussian graphical models, high dimensional variable selection and a random‐coefficient model.

Suggested Citation

  • Faming Liang & Bochao Jia & Jingnan Xue & Qizhai Li & Ye Luo, 2018. "An imputation–regularized optimization algorithm for high dimensional missing data problems and beyond," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 80(5), pages 899-926, November.
  • Handle: RePEc:bla:jorssb:v:80:y:2018:i:5:p:899-926
    DOI: 10.1111/rssb.12279
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    Cited by:

    1. Byrd, Michael & Nghiem, Linh H. & McGee, Monnie, 2021. "Bayesian regularization of Gaussian graphical models with measurement error," Computational Statistics & Data Analysis, Elsevier, vol. 156(C).
    2. Jingxuan Luo & Lili Yue & Gaorong Li, 2023. "Overview of High-Dimensional Measurement Error Regression Models," Mathematics, MDPI, vol. 11(14), pages 1-22, July.
    3. Runmin Shi & Faming Liang & Qifan Song & Ye Luo & Malay Ghosh, 2018. "A Blockwise Consistency Method for Parameter Estimation of Complex Models," Sankhya B: The Indian Journal of Statistics, Springer;Indian Statistical Institute, vol. 80(1), pages 179-223, December.

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