Determination of Optimal Sampling Design for Spatial Data Analysis
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Abstract:
Extended Abstract. Inferences for spatial data are affected substantially by the spatial configuration of the network of sites where measurements are taken. Consider the following standard data-model framework for spatial data. Suppose a continuous, spatially-varying quantity, Z, is to be observed at a predetermined number, n, of points ....[ To Countinue Click here]
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Journal title
volume 2 issue 1
pages 53- 60
publication date 2005-09
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