Tax revenue modelling and forecasting is very crucial
for revenue collection and tax administration management. The
dynamics of heteroscedasticity in the financial time series (tax
revenue) in the domain of technique used to model and predict tax
revenue in the emerging economy threw us to this investigation.
The reviews are categorized into two the tax revenue and stock
exchange index. Five factors were considered in this studies
modelling, forecasting, linear model, nonlinear model and
heteroscedasticity, it is on this note that we syntheses over 75
studies from the literature to consider the pattern of reporting tax
revenue and stock market index. Thus, from the reviewed
literature, we inferred that the pattern of reporting tax revenue
data and the analytical techniques employed by most of these
studies are responsible for the instability (volatility) in the
financial time series forecasting. Also, results revealed that linear
models are mostly applied to tax revenue data with fewer
non-linear models, while combination and single non-linear
models were mostly used for stock exchange data. Thus, we
recommend the combination of linear and nonlinear models for
both tax revenue and stock exchange data which can minimize the
error of heteroscedasticity in the forecasting of tax revenue in a
developing economy.