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            "name": "R-bang",
            "description": "Bayesian Analysis, No Gibbs"
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            "name": "R-bannerCommenter",
            "description": "Make banner comments with a consistent format"
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            "name": "R-BANOVA",
            "description": "Hierarchical Bayesian ANOVA models"
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            "name": "R-bark",
            "description": "Bayesian Additive Regression Kernels"
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            "name": "R-BART",
            "description": "Bayesian Additive Regression Trees"
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            "name": "R-bartBMA",
            "description": "Bayesian Additive Regression Trees using Bayesian Model Averaging"
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        {
            "name": "R-bartCause",
            "description": "Causal inference using Bayesian Additive Regression Trees"
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        {
            "name": "R-bartcs",
            "description": "Bayesian Additive Regression Trees for Confounder Selection"
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            "name": "R-BAS",
            "description": "Bayesian variable selection and model averaging via Bayesian adaptive sampling"
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            "name": "R-basad",
            "description": "Bayesian variable selection with shrinking and diffusing priors"
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        {
            "name": "R-base64enc",
            "description": "Tools for base64 encoding"
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            "name": "R-base64url",
            "description": "Fast and URL-safe Base64 encoder/decoder"
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            "name": "R-basefun",
            "description": "Infrastructure for computing with basis functions"
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        {
            "name": "R-basemodels",
            "description": "Baseline models for classification and regression"
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            "name": "R-BaseSet",
            "description": "Work with sets the tidy way"
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            "name": "R-basicMCMCplots",
            "description": "Trace plots, density plots and chain comparisons for MCMC samples"
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        {
            "name": "R-BASS",
            "description": "Bayesian Adaptive Spline Surfaces"
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        {
            "name": "R-BatchJobs",
            "description": "Batch computing with R"
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        {
            "name": "R-batchmeans",
            "description": "Consistent batch means estimation of Monte Carlo standard errors"
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            "name": "R-batchtools",
            "description": "Tools for computation on batch systems"
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            "name": "R-baycn",
            "description": "Bayesian inference for causal networks"
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            "name": "R-bayefdr",
            "description": "Bayesian estimation and optimisation of expected FDR and expected FNR"
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            "name": "R-bayes4psy",
            "description": "User-friendly Bayesian data analysis for psychology"
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            "name": "R-bayesAB",
            "description": "Fast Bayesian methods for A/B testing"
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            "name": "R-bayesammi",
            "description": "Bayesian estimation of the Additive Main effects and Multiplicative Interaction model"
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            "name": "R-bayesanova",
            "description": "Bayesian inference in the Analysis of Variance via Markov Chain Monte Carlo in gaussian mixture models"
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            "name": "R-BayesBinMix",
            "description": "Bayesian estimation of mixtures of multivariate Bernoulli distributions"
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            "name": "R-BayesBP",
            "description": "Bayesian estimation using Bernstein polynomial fits rate matrix"
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        {
            "name": "R-bayesbr",
            "description": "Bayesian Beta regression in R"
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        {
            "name": "R-bayescopulareg",
            "description": "Bayesian copula regression"
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            "name": "R-bayescount",
            "description": "Power calculations and Bayesian analysis of count distributions and FECRT Data using MCMC"
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        {
            "name": "R-BayesDA",
            "description": "Functions and datasets for Bayesian Data Analysis (2nd ed.)"
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        {
            "name": "R-bayesDccGarch",
            "description": "Methods and tools for Bayesian analysis of DCC-GARCH(1,1) model"
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        {
            "name": "R-BayesDesign",
            "description": "Bayesian single-arm design with survival endpoints"
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        {
            "name": "R-bayesdfa",
            "description": "Bayesian Dynamic Factor Analysis (DFA) with Stan"
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        {
            "name": "R-BayesESS",
            "description": "Determines effective sample size of a parametric prior distribution in Bayesian models"
        },
        {
            "name": "R-BayesFactor",
            "description": "Computation of Bayes factors for common designs"
        },
        {
            "name": "R-bayesforecast",
            "description": "Bayesian time series modeling with Stan"
        },
        {
            "name": "R-bayesGAM",
            "description": "Multivariate response generalized additive models using Hamiltonian Monte Carlo"
        },
        {
            "name": "R-bayesGARCH",
            "description": "Bayesian estimation of the GARCH(1,1) model with Student-t innovations"
        },
        {
            "name": "R-BayesGOF",
            "description": "Bayesian modeling via frequentist goodness-of-fit"
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        {
            "name": "R-bayesian",
            "description": "Bindings for Bayesian TidyModels"
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        {
            "name": "R-BayesianNetwork",
            "description": "Bayesian network modelling and analysis"
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            "name": "R-BayesianTools",
            "description": "General-purpose MCMC and SMC samplers and tools for Bayesian statistics"
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        {
            "name": "R-Bayesiantreg",
            "description": "Bayesian t regression for modelling mean and scale parameters"
        },
        {
            "name": "R-bayesianVARs",
            "description": "MCMC estimation of Bayesian vector autoregressions"
        },
        {
            "name": "R-BayesKnockdown",
            "description": "Posterior probabilities for edges from knockdown data"
        },
        {
            "name": "R-bayeslincom",
            "description": "Linear combinations of Bayesian posterior samples"
        },
        {
            "name": "R-BayesLN",
            "description": "Bayesian inference for log-normal data"
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        {
            "name": "R-BayesLogit",
            "description": "PolyaGamma sampling"
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