DETERMINING FDI INFLOWS IN INDIA: USING BOX-JENKINS ARIMA APPROACH

M. Disha, Dr Narharibhai Patel, Rajnikant P. Patel
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Abstract

Using time series data for FDI inflow in India from 1991 to 2021, the study seeks to model and predict the FDI inflows in India. The Autoregressive integrated moving average (ARIMA) model created by Box and Jenkins (1976) was utilised to develop the model. Identification of the UBJ included determining the appropriate AR (autoregressive) and MA (moving-average) polynomial orders, i.e., p and q values. The rankings were used to determine the stationary series' autocorrelation and partial autocorrelation functions. It was determined that FDI data were not static and that a single-order difference was sufficient to create the required stationary series. The study identified a low BIC value and then proposed the ARIMA model (0,1,2) as an appropriate FDI predictor in India. The expected FDI inflows for 2022–23 through 2029-2030 were within the confidence interval. The percentage variation between predicted and observed numbers assures that our forecast prices are near actual prices.
确定印度fdi流入:使用box-jenkins arima方法
利用1991年至2021年印度FDI流入的时间序列数据,本研究试图对印度FDI流入进行建模和预测。利用Box和Jenkins(1976)创建的自回归综合移动平均(ARIMA)模型来开发模型。UBJ的识别包括确定适当的AR(自回归)和MA(移动平均)多项式阶,即p和q值。排序用于确定平稳序列的自相关函数和部分自相关函数。确定FDIdata不是静态的,单阶差分足以创建所需的平稳序列。该研究确定了较低的BIC值,然后提出ARIMA模型(0,1,2)作为印度的合适FDI预测因子。预计2022-23年至2029-2030年的外国直接投资流入在置信区间内。预测和观察数字之间的百分比差异确保我们的预测价格接近实际价格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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