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Robust Inference with Binary Data

Published online by Cambridge University Press:  01 January 2025

Maria-Pia Victoria-Feser*
Affiliation:
Faculty of Psychology and Educational Sciences, University of Geneva
*
Requests for reprints should be sent to Maxia-Pia Victoria-Feser, HEC, University of Geneva, 40, bd du Pont d' Arve, CH- 1211 Geneva 4, SWITZERLAND.

Abstract

In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust estimators for the logistic regression model when the responses are binary are analysed. It is found that the MLE and the classical Rao's score test can be misleading in the presence of model misspecification which in the context of logistic regression means either misclassification's errors in the responses, or extreme data points in the design space. A general framework for robust estimation and testing is presented and a robust estimator as well as a robust testing procedure are presented. It is shown that they are less influenced by model misspecifications than their classical counterparts. They are finally applied to the analysis of binary data from a study on breastfeeding.

Type
Articles
Copyright
Copyright © 2002 The Psychometric Society

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Footnotes

The author is partially supported by the Swiss National Science Foundation. She would like to thank Rand Wilcox, Eva Cantoni and Elvezio Ronchetti for their helpful comments on earlier versions of the paper, as well as Stephane Heritier for providing the routine to compute the OBRE.

References

Box, G.E.P. (1953). Nonnormality and tests of variances. Biometrika, 40, 318335.CrossRefGoogle Scholar
Cantoni, E. (1999). Resistant Techniques for Non Parametric Regression, Generalized Linear and Additive Models. Switzerland: University of Geneva.Google Scholar
Carroll, R.J., & Pederson, S. (1993). On robustness in the logistic regression model. Journal of the Royal Statistical Society, Series B, 55, 693706.CrossRefGoogle Scholar
Copas, J.B. (1988). Binary regression models for contaminated data. Journal of the Royal Statistical Society, Series B, 50, 225265.CrossRefGoogle Scholar
Hampel, F.R., Ronchetti, E.M., Rousseeuw, P.J., & Stahel, W.A. (1986). Robust statistics: The approach based on influence functions. New York, NY: John Wiley.Google Scholar
Heritier, S., & Ronchetti, E. (1994). Robust bounded-influence tests in general parametric models. Journal of the American Statistical Association, 89(427), 897904.CrossRefGoogle Scholar
Heritier, S., & Victoria-Feser, M.-P. (1997). Some practical applications of bounded-influence tests. In Maddala, G.S., & Rao, C. (Eds.), Handbook of statistics, Vol 15: Robust inference (pp. 77100). New York, NY: Elsevier Science.CrossRefGoogle Scholar
Huber, P.J. (1981). Robust statistics. New York, NY: John Wiley.CrossRefGoogle Scholar
Kuensch, H.R., Stefanski, L.A., & Carroll, R.J. (1989). Conditionally unbiased bounded-influence estimation in general regression models, with applications to generalized linear models. Journal of the American Statistical Association, 84, 460466.Google Scholar
Mallows, C.L. (1975). On some topics in robustness. Murray Hill, NJ: Bell Telephone Laboratories.Google Scholar
Markatou, M., Basu, A., & Lindsay, B. (1997). Weighted likelihood estimating equations: The discrete case with applications to logistic regression. Journal of Statistical Planning and Inference, 57, 215232.CrossRefGoogle Scholar
McCullagh, P., Nelder, J.A. (1989). Generalized linear models 2nd ed., London, U.K.: Chapman and Hall.CrossRefGoogle Scholar
Moustaki, I., Victoria-Feser, M.-P, & Hyams, H. (1998). A UK study on the effect of socioeconomic background of pregnant women and hospital practice on the decision to breastfeed and the initiation and duration of breastfeeding. London, U.K.: London School of Economics.Google Scholar
Pregibon, D. (1982). Resistant fits for some commonly used logistic models with medical applications. Biometrics, 38, 485498.CrossRefGoogle Scholar
Victoria-Feser, M.-P. (2000). Robust logistic regression for binomial responses. Geneva, Switzerland: University of Geneva.CrossRefGoogle Scholar
Wilcox, R.R. (1998). The goals and strategies of robust methods. British Journal of Mathematical and Statistical Psychology, 51, 139.CrossRefGoogle Scholar