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Neural networks / Interpolation / Computational neuroscience / Radial basis function / Linear regression / Pattern recognition / Machine learning / Generalization error / Least squares / Statistics / Econometrics / Regression analysis
Date: 2007-10-09 06:57:57
Neural networks
Interpolation
Computational neuroscience
Radial basis function
Linear regression
Pattern recognition
Machine learning
Generalization error
Least squares
Statistics
Econometrics
Regression analysis

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