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loo (version 2.6.0)

Efficient Leave-One-Out Cross-Validation and WAIC for Bayesian Models

Description

Efficient approximate leave-one-out cross-validation (LOO) for Bayesian models fit using Markov chain Monte Carlo, as described in Vehtari, Gelman, and Gabry (2017) . 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.

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Version

Install

install.packages('loo')

Monthly Downloads

49,399

Version

2.6.0

License

GPL (>= 3)

Maintainer

Last Published

March 31st, 2023

Functions in loo (2.6.0)

ap_psis

Pareto smoothed importance sampling (PSIS) using approximate posteriors
.ndraws

The number of posterior draws in a draws object.
E_loo

Compute weighted expectations
kfold-generic

Generic function for K-fold cross-validation for developers
kfold-helpers

Helper functions for K-fold cross-validation
find_model_names

Find the model names associated with "loo" objects
loo-datasets

Datasets for loo examples and vignettes
gpdfit

Estimate parameters of the Generalized Pareto distribution
elpd

Generic (expected) log-predictive density
.thin_draws

Thin a draws object
importance_sampling.array

Importance sampling of array
importance_sampling

A parent class for different importance sampling methods.
loo-glossary

LOO package glossary
crps

Continuously ranked probability score
compare

Model comparison (deprecated, old version)
loo_predictive_metric

Estimate leave-one-out predictive performance..
importance_sampling.default

Importance sampling (default)
loo_moment_match_split

Split moment matching for efficient approximate leave-one-out cross-validation (LOO)
loo_model_weights

Model averaging/weighting via stacking or pseudo-BMA weighting
loo_moment_match

Moment matching for efficient approximate leave-one-out cross-validation (LOO)
importance_sampling.matrix

Importance sampling of matrices
loo_subsample

Efficient approximate leave-one-out cross-validation (LOO) using subsampling
psislw

Pareto smoothed importance sampling (deprecated, old version)
nlist

Named lists
parallel_psis_list

Parallel psis list computations
psis_approximate_posterior

Diagnostics for Laplace and ADVI approximations and Laplace-loo and ADVI-loo
old-extractors

Extractor methods
pareto-k-diagnostic

Diagnostics for Pareto smoothed importance sampling (PSIS)
loo_approximate_posterior

Efficient approximate leave-one-out cross-validation (LOO) for posterior approximations
weights.importance_sampling

Extract importance sampling weights
print.loo

Print methods
waic

Widely applicable information criterion (WAIC)
loo-package

Efficient LOO-CV and WAIC for Bayesian models
loo

Efficient approximate leave-one-out cross-validation (LOO)
example_loglik_array

Objects to use in examples and tests
psis

Pareto smoothed importance sampling (PSIS)
extract_log_lik

Extract pointwise log-likelihood from a Stan model
loo_compare

Model comparison
relative_eff

Convenience function for computing relative efficiencies
print_dims

Print dimensions of log-likelihood or log-weights matrix
sis

Standard importance sampling (SIS)
nobs.psis_loo_ss

The number of observations in a psis_loo_ss object.
obs_idx

Get observation indices used in subsampling
tis

Truncated importance sampling (TIS)
update.psis_loo_ss

Update psis_loo_ss objects
.compute_point_estimate

Compute a point estimate from a draws object