Assuming a general linear model with known covariance matrix, several linear and nonlinear predictors are presented and their properties are discussed. In the context of simultaneous multiple prediction, a total sum of squared errors is suggested as a loss function for comparing predictors. Based on a rundamental relationship hetween prediction and estimation, a very general class of predictors is developed from which predictors with uniformly smaller risk than that of the classical best linear unbiased (i.e., universal kriging) predictor can be constructed. © 1993 Academic Press, Inc.
CITATION STYLE
Gotway, C. A., & Cressie, N. (1993). Improved multivariate prediction under a general linear model. Journal of Multivariate Analysis, 45(1), 56–72. https://doi.org/10.1006/jmva.1993.1026
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