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Econometrics / Data analysis / Statistical forecasting / Kriging / Interpolation / Data assimilation / Linear regression / Missing data / Maximum likelihood / Statistics / Regression analysis / Estimation theory
Date: 2014-10-24 02:47:08
Econometrics
Data analysis
Statistical forecasting
Kriging
Interpolation
Data assimilation
Linear regression
Missing data
Maximum likelihood
Statistics
Regression analysis
Estimation theory

In press, J. Geophys. Res., Due to appear early[removed]Climate signals from station arrays with missing data, and an application to winds Steven C. Sherwood Universities Space Research Association, Seabrook, Maryland

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