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Statistical theory / Philosophy of science / Bayesian inference / Bayes factor / Bayesian probability / Frequentist inference / Loss function / Point estimation / Bayesian linear regression / Statistics / Bayesian statistics / Statistical inference
Date: 2000-11-09 10:01:56
Statistical theory
Philosophy of science
Bayesian inference
Bayes factor
Bayesian probability
Frequentist inference
Loss function
Point estimation
Bayesian linear regression
Statistics
Bayesian statistics
Statistical inference

Bayesian Methods in Conservation Biology PAUL R. WADE Office of Protected Resources, National Marine Fisheries Service, c/o National Marine Mammal Laboratory, 7600

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