tsensembler-package | Dynamic Ensembles for Time Series Forecasting |
ADE | Arbitrated Dynamic Ensemble |
ADE-class | Arbitrated Dynamic Ensemble |
ade_hat | Predictions by an ADE ensemble |
ade_hat-class | Predictions by an ADE ensemble |
base_ensemble | base_ensemble |
blocked_prequential | Prequential Procedure in Blocks |
bm_cubist | Fit Cubist models (M5) |
bm_ffnn | Fit Feedforward Neural Networks models |
bm_gaussianprocess | Fit Gaussian Process models |
bm_gbm | Fit Generalized Boosted Regression models |
bm_glm | Fit Generalized Linear Models |
bm_mars | Fit Multivariate Adaptive Regression Splines models |
bm_pls_pcr | Fit PLS/PCR regression models |
bm_ppr | Fit Projection Pursuit Regression models |
bm_randomforest | Fit Random Forest models |
bm_svr | Fit Support Vector Regression models |
build_base_ensemble | Wrapper for creating an ensemble |
DETS | Dynamic Ensemble for Time Series |
DETS-class | Dynamic Ensemble for Time Series |
dets_hat | Predictions by an DETS ensemble |
dets_hat-class | Predictions by an DETS ensemble |
embed_timeseries | Embedding a Time Series |
erfc | Complementary Gaussian Error Function |
forecast | Forecasting using an ensemble predictive model |
forecast-method | Forecasting using an ensemble predictive model |
get_y | Get the response values from a data matrix |
intraining_estimations | Out-of-bag loss estimations |
learning_base_models | Training the base models of an ensemble |
model_recent_performance | Recent performance of models using EMASE |
model_specs | Setup base learning models |
model_specs-class | Setup base learning models |
model_weighting | Model weighting |
predict | Predicting new observations using an ensemble |
predict-method | Predicting new observations using an ensemble |
predict.ade | Predicting new observations using an ensemble |
predict.base | Predicting new observations using an ensemble |
predict.dets | Predicting new observations using an ensemble |
roll_mean_matrix | Computing the rolling mean of the columns of a matrix |
tsensembler | Dynamic Ensembles for Time Series Forecasting |
update_ade | Updating an ADE model |
update_ade-method | Updating an ADE model |
update_ade_meta | Updating the metalearning layer of an ADE model |
update_ade_meta-method | Updating the metalearning layer of an ADE model |
update_base_models | Update the base models of an ensemble |
update_base_models-method | Update the base models of an ensemble |
update_weights | Updating the weights of base models |
update_weights-method | Updating the weights of base models |
water_consumption | Water Consumption in Oporto city (Portugal) area. |