A Course in Bayesian Graphical Modeling for Cognitive Science
نویسندگان
چکیده
D π a π b π c π d α β γ κ ξ ψ This pdf omits Chapters 1-6 which are contained in the current, 1/1/2014, version of the textbook. The chapters in this draft are not organized in the same way as the current version of the textbook. I have added comments to the table of contents to indicate which chapters in this pdf correspond to chapters in the current textbook. Omitted Omitted Omitted Omitted Omitted Omitted Does not appear to be in the current (1/1/2014) textbook.
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