[PDF][PDF] Box-Jenkins ARIMA approach to predict FDI inflow in India

M Goyal, S Ghalawat, A Girdhar… - Indian Journal of …, 2021 - researchgate.net
M Goyal, S Ghalawat, A Girdhar, N Agarwal, JS Malik
Indian Journal of Extension Education, 2021researchgate.net
The study attempts to model and predict the FDI inflows in India through use of time series
data for FDI inflow in India from 1980 to 2019. The Autoregressive integrated moving
average (ARIMA) model developed by Box and Jenkins (1976) was used to develop the
model. UBJ identification included the determination of appropriate AR (autoregressive) and
MA (moving-average) polynomials orders ie values of p and q. Orders were determined from
the autocorrelation functions and partial autocorrelation functions of the stationary series …
Abstract
The study attempts to model and predict the FDI inflows in India through use of time series data for FDI inflow in India from 1980 to 2019. The Autoregressive integrated moving average (ARIMA) model developed by Box and Jenkins (1976) was used to develop the model. UBJ identification included the determination of appropriate AR (autoregressive) and MA (moving-average) polynomials orders ie values of p and q. Orders were determined from the autocorrelation functions and partial autocorrelation functions of the stationary series. FDI data were found to be non stationary and a single order differencing was sufficient to obtain the appropriate stationary series. The study determined a low AIC value and subsequently introduced the ARIMA model (1, 1, 0) as a suitable FDI predictor model in India. The promised FDI inflows for the years 2016-17 to 2018-19 were within the scope of confidence and the percentage deviation of predictable and observable values ensures that our predicted prices close to real prices.
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