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Efficient approximate leave-one-out cross-validation (LOO) for Bayesian models fit using Markov chain Monte Carlo. The approximation uses Pareto smoothed importance sampling (PSIS), a new procedure for regularizing importance weights. As a byproduct of the calculations, we also obtain approximate standard errors for estimated predictive errors and for the comparison of predictive errors between models. The package also provides methods for using stacking and other model weighting techniques to average Bayesian predictive distributions.

copied from cf-post-staging / r-loo
Type Size Name Uploaded Downloads Labels
conda 122.9 kB | win-64/r-loo-1.1.0-r3.4.1_0.tar.bz2  7 years and 6 months ago 2844 main cf202003 cf201901
conda 123.3 kB | win-64/r-loo-1.1.0-r3.3.2_0.tar.bz2  7 years and 6 months ago 3009 main cf202003 cf201901
conda 111.1 kB | osx-64/r-loo-1.1.0-r3.4.1_0.tar.bz2  7 years and 6 months ago 1403 main cf202003 cf201901
conda 110.7 kB | osx-64/r-loo-1.1.0-r3.3.2_0.tar.bz2  7 years and 6 months ago 1471 main cf202003 cf201901
conda 110.7 kB | linux-64/r-loo-1.1.0-r3.3.2_0.tar.bz2  7 years and 6 months ago 6385 main cf202003 cf201901
conda 110.9 kB | linux-64/r-loo-1.1.0-r3.4.1_0.tar.bz2  7 years and 6 months ago 6407 main cf202003 cf201901

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