A Monte Carlo method for variance estimation for estimators based on induced smoothing

Biostatistics. 2015 Jan;16(1):179-88. doi: 10.1093/biostatistics/kxu021. Epub 2014 May 7.

Abstract

An important issue in statistical inference for semiparametric models is how to provide reliable and consistent variance estimation. Brown and Wang (2005. Standard errors and covariance matrices for smoothed rank estimators. Biometrika 92: , 732-746) proposed a variance estimation procedure based on an induced smoothing for non-smooth estimating functions. Herein a Monte Carlo version is developed that does not require any explicit form for the estimating function itself, as long as numerical evaluation can be carried out. A general convergence theory is established, showing that any one-step iteration leads to a consistent variance estimator and continuation of the iterations converges at an exponential rate. The method is demonstrated through the Buckley-James estimator and the weighted log-rank estimators for censored linear regression, and rank estimation for multiple event times data.

Keywords: Accelerated failure time model; Asymptotic fiducialdistribution; Buckley–James estimator; Censored data; Contraction mapping; Estimating function; Kaplan–Meier estimator; Monte Carlointegration; Rank estimator.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Data Interpretation, Statistical*
  • Humans
  • Models, Statistical*
  • Monte Carlo Method*