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Asymptotic multivariate kriging using estimated parameters with bayesian prediction methods for non-linear predictands

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Figure

Figure 3.1: Density of the Epanechnikov Kernel
Figure 3.2: Cumulative Distribution of the Epanechnikov Function
Figure 4.1: Gaussian Random Field of Prediction Locations
Figure 4.2: Comparison of Laplace, Bayesian, and Plug-In Methods Empirical Coverage Probabilities
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