Forecasting Indian Goods and Services Tax revenue using TBATS, ETS, Neural Networks, and hybrid time series models

被引:4
作者
Thayyib, P. V. [1 ]
Thorakkattle, Muhammed Navas [2 ]
Usmani, Faisal [3 ]
Yahya, Ali T. [4 ]
Farhan, Najib H. S. [5 ]
机构
[1] Vellore Inst Technol, VIT Business Sch, Vellore, India
[2] Natl Inst Technol, Dept Math, Calicut, India
[3] Vellore Inst Technol, Sch Social Sci & Languages, Vellore, India
[4] Al Janad Univ, Dept Business, Taizi, Yemen
[5] Arab Open Univ, Fac Business Studies, Riyadh, Saudi Arabia
关键词
Non-linear models; Neural Networks; forecasting; TBATS; hybrid models; Hybrid Theta-TBATS; Machine Learning; GST; Goods and Services Tax; SOLAR-RADIATION PREDICTION; MACHINE; ARIMA; GST;
D O I
10.1080/23322039.2023.2285649
中图分类号
F [经济];
学科分类号
02 ;
摘要
This study focuses on the crucial task of forecasting tax revenue for India, specifically the Goods and Services Tax (GST), which plays a pivotal role in fiscal spending and taxation policymaking. Practically, the GST time series datasets exhibit linear and non-linear fluctuations due to the dynamic economic environment, changes in tax rates and tax base, and tax non-compliance, posing challenges for accurate forecasting. Traditional time-series forecasting methods like ARIMA, assuming linearity, often yield inaccurate results. To address this, we explore alternative forecasting models, including Trigonometric Seasonality Box-Cox Transformation ARIMA errors Trend Seasonal components (TBATS) and Neural Networks: Artificial Neural Networks (ANN), Neural Networks for Autoregression (NNAR), which capture both linear and non-linear relationships. First, we test single time series models like Exponential Smoothing (ETS), TBATS, ANN, and NNAR. Second, we also test hybrid models combining linear models, non-linear models, and neural network models. The findings reveal that the Hybrid Theta-TBATS model offers superior forecasting accuracy, challenging recent research favouring neural network models. The study highlights the effectiveness of advanced non-linear models, particularly TBATS and its hybridisations with linear models, in GST revenue forecasting. Our study also found that the single TBATS is the second-best model, which offers better forecasting accuracy. These insights have significant implications for policymakers and researchers in taxation and fiscal planning, emphasising the need to incorporate non-linear dynamics and advanced modelling techniques to enhance the accuracy of GST revenue forecasts.
引用
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页数:23
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