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Estimation theory / Model selection / Nested sampling algorithm / Sufficient statistic / Loss function / Importance sampling / Bayesian inference / M-estimator / Gamma distribution / Statistics / Bayesian statistics / Statistical theory
Date: 2006-08-14 21:33:27
Estimation theory
Model selection
Nested sampling algorithm
Sufficient statistic
Loss function
Importance sampling
Bayesian inference
M-estimator
Gamma distribution
Statistics
Bayesian statistics
Statistical theory

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