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misaem

Package R for "Stochastic Approximation EM for Logistic Regression with Missing Values (W. Jiang, J. Josse, M. Lavielle, 2018)"

misaem is a method to apply statistical inference for logistic regression model with missing data. This method is based on likelihood, including

  1. A stochastic approximation version of EM algorithm based on Metropolis-Hasting sampling, to estimate the parameters of logistic regression;
  2. Estimation of parameters' variance based one Louis formula;
  3. Model selection procedure based on AIC or BIC.

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