Bootstrapping MM-estimators for linear regression with fixed designs
Matias Salibian-Barrera
Statistics & Probability Letters, 2006, vol. 76, issue 12, 1287-1297
Abstract:
In this paper, I study the extension of the robust bootstrap [Salibian-Barrera, M., Zamar, R.H., 2002. Bootstrapping robust estimates of regression. Ann. Statist. 30, 556-582] to the case of fixed designs. The robust bootstrap is a computer-intensive inference method for robust regression estimators which is computationally simple (because we do not need to re-compute the robust estimate with each bootstrap sample) and robust to the presence of outliers in the bootstrap samples. In this paper, I prove the consistency of this method for the case of non-random explanatory variables and illustrate its use on a real data set. Simulation results indicate that confidence intervals based on the robust bootstrap have good finite-sample coverage levels.
Keywords: Bootstrap; Fixed; design; MM-estimators; Robustness; Inference; Linear; Regression (search for similar items in EconPapers)
Date: 2006
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Citations: View citations in EconPapers (6)
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