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Statistics / Regression analysis / Estimation theory / Linear regression / Mean squared error / Errors and residuals / Autocorrelation / Prediction / Sampling / Multicollinearity / Regression-Kriging
Date: 2015-10-21 13:33:05
Statistics
Regression analysis
Estimation theory
Linear regression
Mean squared error
Errors and residuals
Autocorrelation
Prediction
Sampling
Multicollinearity
Regression-Kriging

CSIRO PUBLISHING www.publish.csiro.au/journals/ajsr Australian Journal of Soil Research, 2003, 41, 1403–1422

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