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Statistical theory / Statistical inference / Model selection / Oncorhynchus / Rainbow trout / Akaike information criterion / Salmon / Hierarchical Bayes model / Bayesian inference / Statistics / Fish / Bayesian statistics
Date: 2014-10-29 17:44:54
Statistical theory
Statistical inference
Model selection
Oncorhynchus
Rainbow trout
Akaike information criterion
Salmon
Hierarchical Bayes model
Bayesian inference
Statistics
Fish
Bayesian statistics

Independent Scientific Advisory Board for the Northwest Power and Conservation Council, Columbia River Basin Indian Tribes, and National Marine Fisheries Service th 851 SW 6 Avenue, Suite 1100

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