Authors
Elvezio Ronchetti, Christopher Field, Wade Blanchard
Publication date
1997/9/1
Journal
Journal of the American Statistical Association
Volume
92
Issue
439
Pages
1017-1023
Publisher
Taylor & Francis Group
Description
This article gives a robust technique for model selection in regression models, an important aspect of any data analysis involving regression. There is a danger that outliers will have an undue influence on the model chosen and distort any subsequent analysis. We provide a robust algorithm for model selection using Shao's cross-validation methods for choice of variables as a starting point. Because Shao's techniques are based on least squares, they are sensitive to outliers. We develop our robust procedure using the same ideas of cross-validation as Shao but using estimators that are optimal bounded influence for prediction. We demonstrate the effectiveness of our robust procedure in providing protection against outliers both in a simulation study and in a real example. We contrast the results with those obtained by Shao's method, demonstrating a substantial improvement in choosing the correct model in …
Total citations
1996199719981999200020012002200320042005200620072008200920102011201220132014201520162017201820192020202120222023202412433435681211119129311711655787591
Scholar articles
E Ronchetti, C Field, W Blanchard - Journal of the American Statistical Association, 1997