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Normal distribution / Negative binomial distribution / Maximum likelihood / Multivariate normal distribution / Central limit theorem / Markov chain Monte Carlo / Slice sampling / Statistics / Mathematical analysis / Probability and statistics
Date: 2008-12-18 12:44:56
Normal distribution
Negative binomial distribution
Maximum likelihood
Multivariate normal distribution
Central limit theorem
Markov chain Monte Carlo
Slice sampling
Statistics
Mathematical analysis
Probability and statistics

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