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Linear representation of M-estimates in linear models
Authors:C Radhakrishna Rao  L C Zhao
Abstract:Consider the linear regression model, yi = xiβ0 + ei, i = l,…,n, and an M-estimate β of βo obtained by minimizing Σρ(yi — xiβ), where ρ is a convex function. Let Sn = ΣXiXiXi and rn = Sn½ (β — β0) — Sn 2 Σxih(ei), where, with a suitable choice of h(.), the expression Σ xix(e,) provides a linear representation of β. Bahadur (1966) obtained the order of rn as n→ ∞ when βo is a one-dimensional location parameter representing the median, and Babu (1989) proved a similar result for the general regression parameter estimated by the LAD (least absolute deviations) method. We obtain the stochastic order of rn as n → ∞ for a general M-estimate as defined above, which agrees with the results of Bahadur and Babu in the special cases considered by them.
Keywords:Bahadur representation  LAD estimate  linear regression model  M-estimate
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