GPModel
Set the data required for making predictions with a GPModel
set_prediction_data(gp_model, vecchia_pred_type = NULL,
num_neighbors_pred = NULL, cg_delta_conv_pred = NULL,
nsim_var_pred = NULL, rank_pred_approx_matrix_lanczos = NULL,
group_data_pred = NULL, group_rand_coef_data_pred = NULL,
gp_coords_pred = NULL, gp_rand_coef_data_pred = NULL,
cluster_ids_pred = NULL, X_pred = NULL)
A GPModel
A string
specifying the type of Vecchia approximation used for making predictions.
Default value if vecchia_pred_type = NULL: "order_obs_first_cond_obs_only".
Available options:
"order_obs_first_cond_obs_only": Vecchia approximation for the observable process and observed training data is ordered first and the neighbors are only observed training data points
"order_obs_first_cond_all": Vecchia approximation for the observable process and observed training data is ordered first and the neighbors are selected among all points (training + prediction)
"latent_order_obs_first_cond_obs_only": Vecchia approximation for the latent process and observed data is ordered first and neighbors are only observed points
"latent_order_obs_first_cond_all": Vecchia approximation for the latent process and observed data is ordered first and neighbors are selected among all points
"order_pred_first": Vecchia approximation for the observable process and prediction data is ordered first for making predictions. This option is only available for Gaussian likelihoods
an integer
specifying the number of neighbors for the Vecchia approximation
for making predictions. Default value if NULL: num_neighbors_pred = 2 * num_neighbors
a numeric
specifying the tolerance level for L2 norm of residuals for
checking convergence in conjugate gradient algorithms when being used for prediction
Default value if NULL: 1e-3
an integer
specifying the number of samples when simulation
is used for calculating predictive variances
Default value if NULL: 1000
an integer
specifying the rank
of the matrix for approximating predictive covariances obtained using the Lanczos algorithm
Default value if NULL: 1000
A vector
or matrix
with elements being group levels
for which predictions are made (if there are grouped random effects in the GPModel
)
A vector
or matrix
with covariate data
for grouped random coefficients (if there are some in the GPModel
)
A matrix
with prediction coordinates (=features) for
Gaussian process (if there is a GP in the GPModel
)
A vector
or matrix
with covariate data for
Gaussian process random coefficients (if there are some in the GPModel
)
A vector
with elements indicating the realizations of
random effects / Gaussian processes for which predictions are made
(set to NULL if you have not specified this when creating the GPModel
)
A matrix
with prediction covariate data for the
fixed effects linear regression term (if there is one in the GPModel
)
Fabio Sigrist
# \donttest{
data(GPBoost_data, package = "gpboost")
set.seed(1)
train_ind <- sample.int(length(y),size=250)
gp_model <- GPModel(group_data = group_data[train_ind,1], likelihood="gaussian")
set_prediction_data(gp_model, group_data_pred = group_data[-train_ind,1])
# }
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