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Statistics / Nonparametric statistics / Statistical tests / Statistical inference / Means / Multivariate statistics / Principal component analysis / Resampling / Z-test / Bootstrapping / Positive-definite kernel / KolmogorovSmirnov test
Date: 2009-11-08 23:50:48
Statistics
Nonparametric statistics
Statistical tests
Statistical inference
Means
Multivariate statistics
Principal component analysis
Resampling
Z-test
Bootstrapping
Positive-definite kernel
KolmogorovSmirnov test

spectralNullDistrib_final_long.dvi

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