Open Journal of Statistics

Volume 2, Issue 3 (July 2012)

ISSN Print: 2161-718X   ISSN Online: 2161-7198

Google-based Impact Factor: 0.53  Citations  

Subsampling Method for Robust Estimation of Regression Models

HTML  Download Download as PDF (Size: 756KB)  PP. 281-296  
DOI: 10.4236/ojs.2012.23034    6,366 Downloads   10,350 Views  Citations
Author(s)

ABSTRACT

We propose a subsampling method for robust estimation of regression models which is built on classical methods such as the least squares method. It makes use of the non-robust nature of the underlying classical method to find a good sample from regression data contaminated with outliers, and then applies the classical method to the good sample to produce robust estimates of the regression model parameters. The subsampling method is a computational method rooted in the bootstrap methodology which trades analytical treatment for intensive computation; it finds the good sample through repeated fitting of the regression model to many random subsamples of the contaminated data instead of through an analytical treatment of the outliers. The subsampling method can be applied to all regression models for which non-robust classical methods are available. In the present paper, we focus on the basic formulation and robustness property of the subsampling method that are valid for all regression models. We also discuss variations of the method and apply it to three examples involving three different regression models.

Share and Cite:

M. Tsao and X. Ling, "Subsampling Method for Robust Estimation of Regression Models," Open Journal of Statistics, Vol. 2 No. 3, 2012, pp. 281-296. doi: 10.4236/ojs.2012.23034.

Cited by

[1] An optimal transport approach for selecting a representative subsample with application in efficient kernel density estimation
… of Computational and …, 2022
[2] The impact of trust on purchase intention through omnichannel retailing
Journal of Advances in …, 2022
[3] Genomic Diversity in Sporadic Breast Cancer in a Latin American Population
2020
[4] LowCon: A design-based subsampling approach in a misspecified linear model
2020
[5] Particle-Set Identification method to study multiplicity fluctuations
2019
[6] Source apportionment of ambient methane enhancements in Los Angeles, California, to evaluate emission inventory estimates
2019
[7] Why would firms choose dividends over share repurchases?
2018
[8] Detection of influential points as a byproduct of resampling-based variable selection procedures
Computational Statistics & Data Analysis, 2017
[9] Surficial sediment erodibility from time-series measurements of suspended sediment concentrations: development and validation
Ocean Dynamics, 2017
[10] On stability issues in deriving multivariable regression models
Biometrical Journal, 2014

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.