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Statistical inference / Probability interpretations / Statistical theory / Bayesian probability / Philosophy of science / Inverse probability / Bayesian inference / Prior probability / Additive smoothing / Statistics / Bayesian statistics / Probability and statistics
Date: 2011-04-28 11:35:14
Statistical inference
Probability interpretations
Statistical theory
Bayesian probability
Philosophy of science
Inverse probability
Bayesian inference
Prior probability
Additive smoothing
Statistics
Bayesian statistics
Probability and statistics

The Bayesian Analysis Software Developed At Washington University Karen R. Marutyan, PhD and G. Larry Bretthorst, PhD Biomedical Magnetic Resonance Laboratory, Mallinckrodt Institute of Radiology, Washington University,

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