Robust M -estimator of Parameters in Variance Components Model
نویسندگان
چکیده
It is shown that a method of robust estimation in a two way crossed classification mixed model, recently proposed by Bednarski and Zontek (1996), can be extended to a more general case of variance components model with commutative a covariance matrices.
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