Linear Latent Non-Gaussian Models with Flexible Distributions


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Documentation for package ‘ngme2’ version 0.9.7

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A B C D F G I M N O P Q R S T V

-- A --

adagrad AdaGrad SGD optimization
adam Adam SGD optimization
adamW AdamW SGD optimization
adaptive_gd Adaptive gradient descent
ar ngme AR(p) model specification
ar1 ngme AR(1) model specification
argo_float Argo float dataset
arma ngme ARMA(p, q) model specification
arma11 Convenience wrapper for ARMA(1,1)

-- B --

batch_decay Batch/checkpoint decay helper
batch_means_ci Pooled Batch-Means Confidence Intervals from Multiple Chains
batch_means_estimator Batch-Means Covariance Estimator for SGD Trajectories
bfgs BFGS optimization
bv Ngme bivariate model specification
bv_matern Ngme bivariate model with Matern sub_models

-- C --

calibrate_inv_exp_lambda Calibrate Inverse-Exponential Prior for NIG Driven Noise
calibrate_inv_exp_lambda_driven_nig Calibrate Inverse-Exponential Prior for NIG Driven Noise
cienaga The swamp of Cienaga Grande in Santa Marta, Colombia
cienaga.border The x y location of the border of the swamp of Cienaga Grande in Santa Marta, Colombia
compare_noise_kld Compare noise objects using Kullback-Leibler divergence
compute_index_corr_from_map Helper function to compute the index_corr vector
compute_log_like Compute Gaussian log-likelihood
compute_ngme_CI Refit an Existing ngme Object with SGD and Compute Batch-Means CI
compute_ngme_ci Refit an Existing ngme Object with SGD and Compute Batch-Means CI
compute_ngme_sgld_samples Refit an Existing ngme Object with SGLD and Extract Samples
compute_score_given_pred Compute the scores given the prediction
control_ngme Generate control specifications for the ngme model
control_opt Generate control specifications for 'ngme()' function.
control_opt_batch_ci Generate CI-focused control settings for batch-means inference
create_paired_cv_splits Create paired indices for bivariate cross-validation Ensures that paired observations (e.g., u_wind and v_wind at same location) are kept together in the same fold
cross_validation Compute the cross-validation for the ngme model Perform cross-validation for ngme model first into sub_groups (a list of target, and train data)

-- D --

dgal The Generalized Asymmetric Laplace (GAL) Distribution
dgig The Generalised Inverse-Gaussian (GIG) Distribution
dig The Inverse-Gaussian (IG) Distribution
digam The Inverse-Gamma (IGam) Distribution
dnig The Normal Inverse-Gaussian (NIG) Distribution

-- F --

f Specifying a latent process model (wrapper function for each model)

-- G --

gal The Generalized Asymmetric Laplace (GAL) Distribution
generic Generic precision matrix operator
generic_ns Non-stationary precision matrix operator with custom matrix combinations
get_data_from_formula Extracts design matrix from a formula and data.
get_parameter_distance Calculate parameter distance from true values
get_trace_trajectories Get trace trajectories from ngme fitting
get_trajectories get the trajectories of parameters of the model
gig The Generalised Inverse-Gaussian (GIG) Distribution

-- I --

ig The Inverse-Gaussian (IG) Distribution
igam The Inverse-Gamma (IGam) Distribution
iid ngme iid model specification

-- M --

make_time_series_cv_index Create Time Series Cross-Validation Indices
matern ngme Matern SPDE model specification
mean_list taking mean over a list of nested lists
merge_noise Merge 2 noise into 1 noise
merge_replicates Merge model of replicates into model of 1 replicate given train_idx and test_idx, the merged model contains all the information of train_idx from different replicates.
momentum Momentum SGD optimization

-- N --

name2fun Convert transformation name to function
ngme Fit an additive linear mixed effect model over replicates
ngme_as_sparse Convert sparse matrix into sparse dgCMatrix
ngme_batch_ci Batch-Means Confidence Intervals from an ngme Fit
ngme_cov_matrix variance of the data or the latent field
ngme_make_mesh_repls ngme make mesh for different replicates
ngme_model_types Show ngme model types
ngme_noise ngme noise specification
ngme_noise_types Show ngme noise types
ngme_optimizers List supported optimizers
ngme_parse_formula Parse the formula for ngme function
ngme_post_samples posterior samples of different latent models
ngme_prior_types Show ngme priors
ngme_result Access the result of a ngme fitted model
ngme_sgld_ci Quantile Confidence Intervals from SGLD Samples
ngme_sgld_samples Extract Posterior-like Samples from Stored SGLD Trajectories
ngme_ts_make_A Make observation matrix for time series
ngme_update Check whether a newer stable version of ngme2 is available
nig The Normal Inverse-Gaussian (NIG) Distribution
noise_gal ngme noise specification
noise_nig ngme noise specification
noise_normal ngme noise specification
noise_normal_nig ngme noise specification
noise_skew_t ngme noise specification
noise_t ngme noise specification

-- O --

openmp_test Test OpenMP availability and report the number of threads.
ou Ornstein-Uhlenbeck Process Model

-- P --

pgal The Generalized Asymmetric Laplace (GAL) Distribution
pgig The Generalised Inverse-Gaussian (GIG) Distribution
pig The Inverse-Gaussian (IG) Distribution
pigam The Inverse-Gamma (IGam) Distribution
plot.ngme_noise Plot the density of one or more stationary noise objects
plot.ngme_sgld_ci Plot Posterior Distributions from SGLD Samples
plot.parameter_distance Plot method for parameter_distance
pnig The Normal Inverse-Gaussian (NIG) Distribution
poly_decay Polynomial schedule helper
posterior_plot Plot Posterior Distributions from SGLD Samples
precision_matrix_multivariate Compute the precision matrix for multivariate model
precision_matrix_multivariate_spde Compute the precision matrix for multivariate spde Matern model
precond_sgd Preconditioner SGD optimization
predict.ngme Predict function of ngme2 predict using ngme after estimation
print.ngme Print an ngme model
print.ngme_model Print ngme model
print.ngme_noise Print ngme noise
print.ngme_operator Print ngme operator
print.ngme_replicate Print ngme object
print.ngme_trajectories Print method for ngme_trajectories
print.noise_kld_comparison Print method for noise_kld_comparison
print.parameter_distance Print method for parameter_distance
priors Prior Container
prior_half_cauchy Prior Half-Cauchy
prior_inv_exp Prior Inverse-Exponential
prior_inv_exponential Prior Inverse-Exponential
prior_none Prior None
prior_normal Prior Normal
prior_pc_sd Prior PC-SD

-- Q --

qgal The Generalized Asymmetric Laplace (GAL) Distribution
qgig The Generalised Inverse-Gaussian (GIG) Distribution
qig The Inverse-Gaussian (IG) Distribution
qigam The Inverse-Gamma (IGam) Distribution
qnig The Normal Inverse-Gaussian (NIG) Distribution

-- R --

re ngme random effect model
rgal The Generalized Asymmetric Laplace (GAL) Distribution
rgig The Generalised Inverse-Gaussian (GIG) Distribution
rig The Inverse-Gaussian (IG) Distribution
rigam The Inverse-Gamma (IGam) Distribution
rmsprop Root Mean Square Propagation (RMSProp) SGD optimization
rnig The Normal Inverse-Gaussian (NIG) Distribution
rw1 Random Walk Model of Order 1 (RW1)
rw2 Random Walk Model of Order 2 (RW2)

-- S --

sgd Vanilla SGD optimization
sgld Stochastic Gradient Langevin Dynamics (SGLD) optimization
simulate.ngme Simulate from a ngme object (possibly with replicates)
simulate.ngme_model Simulate latent process with noise
simulate.ngme_noise Simulate ngme noise object
spacetime Ngme space-time non-separable model specification
stepsize_control Unified stepsize control
stepsize_decay Stepsize decay schedule
stepsize_schedule Stepsize schedule
summary.ngme Summary of ngme fit result
summary.ngme_batch_ci Summary for Batch-Means CI Results

-- T --

tp ngme tensor-product model specification
traceplot Trace plot of ngme fitting

-- V --

var1 ngme VAR(1) bivariate model specification (Cayley re-parameterization)