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Statistics / Probability distributions / Statistical inference / Computational statistics / Nonparametric statistics / Hypothesis testing / Normal distribution / Bootstrapping / Central limit theorem / Chi-squared distribution / Median / Variance
Date: 2013-09-05 02:59:42
Statistics
Probability distributions
Statistical inference
Computational statistics
Nonparametric statistics
Hypothesis testing
Normal distribution
Bootstrapping
Central limit theorem
Chi-squared distribution
Median
Variance

B-test: A Non-parametric, Low Variance Kernel Two-sample Test Arthur Gretton Gatsby Unit University College London

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