acc_successions |
Returns a vector with the number of consecutive nodes in each level |
add_attr_to_fit |
Adds the mu vector and sigma matrix as attributes to the bn.fit or dbn.fit object |
approximate_inference |
Performs approximate inference forecasting with the GDBN over a data set |
approx_prediction_step |
Performs approximate inference in a time slice of the dbn |
calc_mu |
Calculate the mu vector of means of a Gaussian linear network. Front end of a C++ function. |
calc_mu_cpp |
Calculate the mu vector of means of a Gaussian linear network. This is the C++ backend of the function. |
calc_sigma |
Calculate the sigma covariance matrix of a Gaussian linear network. Front end of a C++ function. |
calc_sigma_cpp |
Calculate the sigma covariance matrix of a Gaussian linear network. This is the C++ backend of the function. |
check_time0_formatted |
Checks if the vector of names are time formatted to t0 |
create_blacklist |
Creates the blacklist of arcs from a folded data.table |
dynamic_ordering |
Gets the ordering of a single time slice in a DBN |
exact_inference |
Performs exact inference forecasting with the GDBN over a data set |
exact_prediction_step |
Performs exact inference in a time slice of the dbn |
expand_time_nodes |
Extends the names of the nodes in t_0 to t_(max-1) |
fit_dbn_params |
Fits a markovian n DBN model |
fold_dt |
Widens the dataset to take into account the t previous time slices |
fold_dt_rec |
Widens the dataset to take into account the t previous time slices |
forecast_ts |
Performs forecasting with the GDBN over a data set |
learn_dbn_struc |
Learns the structure of a markovian n DBN model from data |
merge_nets |
Merges and replicates the arcs in the static BN into all the time-slices in the DBN |
motor |
Multivariate time series dataset on the temperature of an electric motor |
mvn_inference |
Performs inference over a multivariate normal distribution |
node_levels |
Defines a level for every node in the net |
plot_dynamic_network |
Plots a dynamic Bayesian network in a hierarchical way |
plot_network |
Plots a Bayesian networks in a hierarchical way |
predict_bn |
Performs inference over a fitted GBN |
predict_dt |
Performs inference over a test data set with a GBN |
time_rename |
Renames the columns in a data.table so that they end in '_t_0' |