hybridts:Hybrid Time Series Forecasting Using Error Remodeling Approach
Method and tool for generating hybrid time series forecasts using an error remodeling approach. These forecasting
approaches utilize a recursive technique for modeling the
linearity of the series using a linear method (e.g., ARIMA,
Theta, etc.) and then models (forecasts) the residuals of the
linear forecaster using non-linear neural networks (e.g., ANN,
ARNN, etc.). The hybrid architectures comprise three steps:
firstly, the linear patterns of the series are forecasted which
are followed by an error re-modeling step, and finally, the
forecasts from both the steps are combined to produce the final
output. This method additionally provides the confidence
intervals as needed. Ten different models can be implemented
using this package. This package generates different types of
hybrid error correction models for time series forecasting
based on the algorithms by Zhang. (2003), Chakraborty et al.
(2019), Chakraborty et al. (2020), Bhattacharyya et al. (2021),
Chakraborty et al. (2022), and Bhattacharyya et al. (2022)
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