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Statistics / Regression analysis / Statistical theory / Entropy / Information theory / Randomness / Least squares / Kriging / Errors and residuals / Linear regression / Lossless JPEG
Date: 2008-08-29 22:13:05
Statistics
Regression analysis
Statistical theory
Entropy
Information theory
Randomness
Least squares
Kriging
Errors and residuals
Linear regression
Lossless JPEG

OPTIMAL PREDICTORS FOR THE DATA COMPRESSION OF DIGITAL ELEVATION MODELS USING THE METHOD OF LAGRANGE MULTIPLIERS .

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