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Joseph W. McKean

Researcher at Western Michigan University

Publications -  110
Citations -  3362

Joseph W. McKean is an academic researcher from Western Michigan University. The author has contributed to research in topics: Linear model & Estimator. The author has an hindex of 28, co-authored 107 publications receiving 3106 citations. Previous affiliations of Joseph W. McKean include Pennsylvania State University.

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R Estimates and Associated Inferences for Mixed Models With Covariates in a Multicenter Clinical Trial

TL;DR: In this paper, robust rank-based methods are proposed for the analysis of data from multicenter clinical trials using a mixed model (including covariates) in which the treatment effects are assumed to be fixed and the center effects are considered to be random.
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Robust procedures for drug combination problems with quantal responses

TL;DR: In this article, the authors proposed a robust analysis based on a robust fit of a generalized linear model, where the response surface is connected to the joint lethality of the drugs via a link function.
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Tests of H0: ρ1 = 0 for Autocorrelation Estimators rF1 and rF2

TL;DR: In this paper, two new tests of the hypothesis of no lag-1 autocorrelation in a time-series process, i.e., H0: ρ1 = 0, are presented for two reduced-bias estimators that were introduced by Huitema and McKean in 1994.
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Influence functions for rank-based procedures in the linear model

TL;DR: In this article, the influence functions for the scores rank estimate and the corresponding drop test are given, based on the difference in dispersion between the full and reduced fits, and the asymptotic distribution of the estimator and test can be inferred from the influence function.
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Rank regression with estimated scores

TL;DR: In this article, a method for estimating the optimal score function based on residuals from an initial fit is described, and the resulting adaptive estimate is shown to be asymptotically efficient.