| Type: | Package | 
| Title: | Wavelet Based Gradient Boosting Method | 
| Version: | 0.1.0 | 
| Author: | Dr. Ranjit Kumar Paul [aut, cre], Dr. Md Yeasin [aut] | 
| Maintainer: | Dr. Ranjit Kumar Paul <ranjitstat@gmail.com> | 
| Description: | Wavelet decomposition method is very useful for modelling noisy time series data. Wavelet decomposition using 'haar' algorithm has been implemented to developed hybrid Wavelet GBM (Gradient Boosting Method) model for time series forecasting using algorithm by Anjoy and Paul (2017) <doi:10.1007/s00521-017-3289-9>. | 
| License: | GPL-3 | 
| Encoding: | UTF-8 | 
| Imports: | caret, dplyr, caretForecast, Metrics, tseries, stats, wavelets, gbm | 
| RoxygenNote: | 7.2.1 | 
| NeedsCompilation: | no | 
| Packaged: | 2023-04-06 07:54:16 UTC; YEASIN | 
| Repository: | CRAN | 
| Date/Publication: | 2023-04-07 08:20:02 UTC | 
Wavelet Based Gradient Boosting Method
Description
Wavelet Based Gradient Boosting Method
Usage
WaveletGBM(ts, MLag = 12, split_ratio = 0.8, wlevels = 3)
Arguments
| ts | Time Series Data | 
| MLag | Maximum Lags | 
| split_ratio | Training and Testing Split | 
| wlevels | Number of Wavelet Levels | 
Value
- Lag: Lags used in model 
- Parameters: Parameters of the model 
- Train_actual: Actual train series 
- Test_actual: Actual test series 
- Train_fitted: Fitted train series 
- Test_predicted: Predicted test series 
- Accuracy: RMSE and MAPE of the model 
References
- Aminghafari, M. and Poggi, J.M. 2012. Nonstationary time series forecasting using wavelets and kernel smoothing. Communications in Statistics-Theory and Methods, 41(3),485-499. 
- Paul, R.K. A and Anjoy, P. 2018. Modeling fractionally integrated maximum temperature series in India in presence of structural break. Theory and Applied Climatology 134, 241–249. 
Examples
library("WaveletGBM")
data<- rnorm(100,100, 10)
WG<-WaveletGBM(ts=data)