The purpose of this article is to investigate on the use of the Minimum Integrated Square Error criterion as a practical tool in building useful regression models, notably in all those situations involving the study of large data sets where a substantial number of outliers can be present or data are clustered. We suggest a technique of regression analysis which consists in comparing the results arising from L 2 estimates with the ones obtained applying some common M-estimators. A new index of similarity between functions is proposed and a Monte Carlo test of hypothesis based on it is introduced. Rejecting the hypothesis of similarity between the estimated regression models implies a careful investigation of data structure. Results of a simulation study, referring to several experimental scenarios, are provided to illustrate the approach we propose.

Clusters Detection in Regression Problems: A Similarity Test Between Estimated Models

DURIO, Alessandra;ISAIA, Ennio Davide
2010-01-01

Abstract

The purpose of this article is to investigate on the use of the Minimum Integrated Square Error criterion as a practical tool in building useful regression models, notably in all those situations involving the study of large data sets where a substantial number of outliers can be present or data are clustered. We suggest a technique of regression analysis which consists in comparing the results arising from L 2 estimates with the ones obtained applying some common M-estimators. A new index of similarity between functions is proposed and a Monte Carlo test of hypothesis based on it is introduced. Rejecting the hypothesis of similarity between the estimated regression models implies a careful investigation of data structure. Results of a simulation study, referring to several experimental scenarios, are provided to illustrate the approach we propose.
2010
39
3
508
516
http://www.informaworld.com/smpp/content~db=all~content=a918382599~frm=titlelink
M-estimators; Minimum integrated square error; Monte Carlo significance test; Robust regression
A. Durio; E. D. Isaia
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/96624
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