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Christophe Croux and Gentiane Haesbroeck. (2003). “Implementing the Bianco and Yohai estimator for logistic
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Computational Statistics & Data Analysis
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Daniel Gervini. (2005). “Robust adaptive estimators for binary regression models”.
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and Inference
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N. Kordzakhia, G.D. Mishra and L.ReiersHlmoen. (2001). “Robust estimation in the logistic regression model”.
Journal of Statistical Planning and Inference
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Peter J. Rousseeuw and Andreas Christmann. (2003). “Robustness against separation and outliers in logistic
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