A fast imputation algorithm in quantile regression

Comput Stat. 2018 Dec;33(4):1589-603. doi: 10.1007/s00180-018-0813-z. Epub 2018 May 15.

Abstract

In many applications, some covariates could be missing for various reasons. Regression quantiles could be either biased or under-powered when ignoring the missing data. Multiple imputation and EM-based augment approach have been proposed to fully utilize the data with missing covariates for quantile regression. Both methods however are computationally expensive. We propose a fast imputation algorithm (FI) to handle the missing covariates in quantile regression, which is an extension of the fractional imputation in likelihood based regressions. FI and modified imputation algorithms (FIIPW and MIIPW) are compared to existing MI and IPW approaches in the simulation studies, and applied to part of of the National Collaborative Perinatal Project study.

Keywords: Imputation methods; Inverse probability weighting; Missing data; Quantile regression.