On Asymptotic Optimality of the Cross-Validation Selected Bandwidth for Complex Spatial Data:Case of

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  Spatial kernel estimate or smoothing has become a useful tool in exploring non-Gaussian distributions for complex spatial data,collected with modern data acquisition techniques.
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