Forecasting public expenditures using ARDL–LSTM hybrid model
DOI:
https://doi.org/10.62933/xr5r0296Keywords:
ARDL, LSTM, ARDL-LSTM, Public Revenues, Public Expenditures.Abstract
Public expenditure is regarded as the main tool for regulating fiscal policy and, consequently, affects the overall economic position of the country. This highlights the importance of high-quality forecasting, particularly when the objective is fiscal sustainability and the efficient allocation of resources. As economic behavior becomes more intricate and the relationships among variables increasingly intertwined, linear models are no longer sufficient for accurate prediction
With the assumption that public expenditure is conditioned by public revenues, this work will endeavor to predict government expenditure through the application of a hybrid ARDL-LSTM model. The method combines Autoregressive Distributed Lag (ARDL) model to explain linear variations and fluctuations of the time series and a neural network model-Long Short-Term Memory (LSTM) to explain nonlinear trends. Based on the comparison criteria. The findings indicated that the hybrid ARDL-LSTM model is more effective in forecasting accuracy, based on the RMSE and MAPE criterion using both the estimation and testing samples, which confirms that the combination of linear and nonlinear model is more efficient in predicting economic time series.
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