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Estimation theory / R / Linear regression / Principal component analysis / Plot / Multivariate adaptive regression splines / Generalized additive model for location /  scale and shape / Statistics / Regression analysis / Econometrics
Date: 2008-01-23 03:36:16
Estimation theory
R
Linear regression
Principal component analysis
Plot
Multivariate adaptive regression splines
Generalized additive model for location
scale and shape
Statistics
Regression analysis
Econometrics

Using R for Data Analysis and Graphics Introduction, Code and Commentary J H Maindonald Centre for Mathematics and Its Applications, Australian National University.

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