肯尼亚增值税收入波动的建模与预测

Muthuri Evans Kithure, A. Waititu, A. Wanjoya
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引用次数: 3

摘要

税收是政府通过向公民和企业实体征收费用来为其支出提供资金的手段之一。肯尼亚税务局(KRA)是负责评估、征收和核算所有政府收入的机构。不稳定的政府收入是财政政策制定者面临的一个挑战,因为它给政府服务提供带来风险,并可能使规划变得困难,因为收入经常出乎意料地达不到支出需求。本研究的主要目的是模拟和预测肯尼亚增值税收入的波动性,并计算其风险价值和预期缺口。分析了3年增值税每日征收的二手数据。第一步是使用ARIMA模型对回归序列的均值方程进行建模,由于ARIMA(3,0,3)具有最小的AIC和BIC值,因此被认为是最合适的。拉格朗日乘数检验利用均值方程的残差证实了ARCH效应的存在。拟合了多个异方差模型,优选TGARCH家族(ARIMA(3,0,3)/TGARCH(1,2))来拟合收益的波动率。使用该模型对收益的波动率进行了一步预测,该模型的值为7.212。对风险价值和预期亏损额的估计涉及使用POT方法,通过对返回数据序列拟合GPD函数。第一步是使用MRL图确定阈值,然后使用阈值对返回数据序列拟合GPD函数。使用MLE估计形状、位置和规模参数,然后使用它们计算95%和99%置信区间的VaR损失和ES。95%和99%的VaR分别为1.45%和1.49%,ES分别为0.04%和0.1%。本研究得出的结论是,波动性在日常增值税收入征收中是持续存在的,并且可以很容易地使用条件异方差模型进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and Forecasting Volatility of Value Added Tax Revenue in Kenya
Taxation is one of the means by which governments finance their expenditure by imposing charges on citizens and corporate entities. Kenya Revenue Authority (KRA) is the agency responsible for the assessment, collection and accounting for of all revenues that are due to government. Volatile government revenue is a challenge for fiscal policy makers since it creates risks to government service provision and can make planning difficult, as revenue falls short of expenditure needs both frequently and unexpectedly. The main objective of this study was to model and forecast the volatility of VAT revenue collected in Kenya as well as computing its value at risk and the expected shortfall. Secondary data on daily VAT revenue collections for a period of 3 years was analyzed. The first step was to model the mean equation of the return series using the ARIMA model and ARIMA(3,0,3) was identified to be the most suitable since it had the least values of AIC and BIC. The Lagrange Multiplier test confirmed the presence of ARCH effects using the residuals of the mean equation. A number of heteroscedastic models were fitted and the TGARCH family (ARIMA(3,0,3)/TGARCH(1,2)) was preferred to fit the volatility of the returns. One step ahead forecasting of volatility of the returns was done using the model which gave a value of 7.212. Estimation of value at risk and expected shortfall involved use of POT method by fitting a GPD function to the return data series. The first step was determination of threshold by use of MRL plot and later fitting a GPD function to the return data series using the threshold. The shape, location and scale parameters were estimated using MLE and they were later used to compute the VaR loss and ES at 95% and 99% confidence intervals. The VaR at 95% and 99% was 1.45% and 1.49% respectively while the ES at both the intervals was 0.04% and 0.1% respectively. This study concluded that volatility is persistent in the daily VAT revenue collections and it can easily be modelled using conditional heteroscedastic models.
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