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Functions and datasets for Bayesian Data Analysis (2nd ed.)
Version: 2012.04-1 | Maintained by: | Categories: science math R | Variants:Methods and tools for Bayesian analysis of DCC-GARCH(1,1) model
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Version: 0.1.2 | Maintained by: barracuda156 | Categories: science math R | Variants: clang10, clang11, clang12, clang13, clang14, clang15, clang16, clang50, clang60, clang70, clang80, clang90, clangdevel, g95, gcc10, gcc11, gcc12, gcc13, gccdevel, gfortranPosterior probabilities for edges from knockdown data
Version: 1.30.0 | Maintained by: | Categories: science R bioconductor | Variants:Linear combinations of Bayesian posterior samples
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Version: 3.1-6 | Maintained by: barracuda156 | Categories: science R economics | Variants: clang10, clang11, clang12, clang13, clang14, clang15, clang16, clang50, clang60, clang70, clang80, clang90, clangdevel, g95, gcc10, gcc11, gcc12, gcc13, gccdevel, gfortranBayesian preference learning with the Mallows rank model
Version: 2.2.1 | Maintained by: barracuda156 | Categories: science math R | Variants: clang10, clang11, clang12, clang13, clang14, clang15, clang16, clang50, clang60, clang70, clang80, clang90, clangdevel, g95, gcc10, gcc11, gcc12, gcc13, gccdevel, gfortranPage 12 of 246 | Showing port(s) 221 to 240