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"description": "Bayesian screening and variable selection"
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"name": "R-brotli",
"description": "Brotli compression format"
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"name": "R-Brq",
"description": "Bayesian analysis of quantile regression models"
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"name": "R-brr",
"description": "Bayesian inference on the ratio of two Poisson rates"
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"name": "R-bruceR",
"description": "Broadly useful, convenient and efficient R functions"
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"name": "R-brxx",
"description": "Bayesian test reliability estimation"
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"name": "R-bs4Dash",
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"description": "Basic Statistics and Data Analysis"
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"description": "Software infrastructure for efficient representation of full genomes and their SNPs"
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"description": "Forge BSgenome data packages"
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"name": "R-bsgof",
"description": "Birnbaum–Saunders goodness-of-fit test"
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"description": "Bayesian super-imposition by translation and rotation growth curve analysis"
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"description": "Bayes screening and model discrimination"
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"name": "R-bsplinePsd",
"description": "Bayesian non-parametric spectral density estimation using b-spline priors"
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"name": "R-bspmma",
"description": "Bayesian Semiparametric Models for Meta-Analysis"
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"name": "R-BSSasymp",
"description": "Asymptotic covariance matrices of some BSS mixing and unmixing matrix estimates"
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"name": "R-bssm",
"description": "Bayesian inference of non-linear and non-Gaussian state space models"
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"name": "R-BSSoverSpace",
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"name": "R-BSSprep",
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