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Statistics / Regression analysis / Autocorrelation / Linear regression / Polynomial regression / Nonparametric regression / Kernel regression / Correlation and dependence / Errors and residuals / Degrees of freedom / Variance / Normal distribution
Date: 2001-11-05 13:11:35
Statistics
Regression analysis
Autocorrelation
Linear regression
Polynomial regression
Nonparametric regression
Kernel regression
Correlation and dependence
Errors and residuals
Degrees of freedom
Variance
Normal distribution

Nonparametric Regression with Correlated Errors Jean Opsomer Iowa State University Yuedong Wang University of California, Santa Barbara

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Source URL: www.pstat.ucsb.edu

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