ABSTRACT
Robust Regression: Analysis and Applications characterizes robust estimators in terms of how much they weight each observation discusses generalized properties of Lp-estimators. Includes an algorithm for identifying outliers using least absolute value criterion in regression modeling reviews redescending M-estimators studies Li linear regression proposes the best linear unbiased estimators for fixed parameters and random errors in the mixed linear model summarizes known properties of Li estimators for time series analysis examines ordinary least squares, latent root regression, and a robust regression weighting scheme and evaluates results from five different robust ridge regression estimators.
TABLE OF CONTENTS
part I|2 pages
Advances in Robust Regression
part II|2 pages
Robust Regression Methods
part III|2 pages
Forecasting and Robust Regression
part IV|2 pages
Robust Ridge Regression