Abstract
In this article, we consider the asymptotic behavior of three kinds of sample breakdown points. It is shown that for the location M-estimator with bounded objective function, both the addition sample breakdown point and the simplified replacement sample breakdown point strongly converge to the gross-error asymptotic breakdown point, whereas the replacement sample breakdown point strongly converges to a smaller value. In addition, it is proved that under some regularity conditions these sample breakdown points are asymptotically normal. The addition sample breakdown point has a smaller asymptotic variance than the simplified replacement sample breakdown point. For the commonly used redescending M-estimators of location, numerical results indicate that among the three kinds of sample breakdown points, the replacement sample breakdown point has the largest asymptotic variance.
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Zhang, J., & Li, G. (1998). Breakdown properties of location M-estimators. Annals of Statistics, 26(3), 1170–1189. https://doi.org/10.1214/aos/1024691093
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