Date of submission: July 5, 2019; date of acceptance: July 25, 2019. * Contact information: adetajud@yahoo.com, Al-Hikmah University, Ilorin, Kwara State, Nigeria, phone: +2348035793148; ORCID ID: https://orcid.org/0000-0001-7456- 0172. Copernican Journal of Finance & Accounting e-ISSN 2300-3065 p-ISSN 2300-12402019, volume 8, issue 2 Adegbite, T.A. (2019). An evaluation of the effect of taxation policy on inf lation in Nigeria. Co- pernican Journal of Finance & Accounting, 8(2), 7–23. http://dx.doi.org/10.12775/CJFA.2019.006 tajudeen adejare adegbite* Al-Hikmah University an evaluation of the effect of taxation policy on inflation in nigeria Keywords: taxation, inf lation in Nigeria, petroleum profit tax (PPT), value added tax (VAT), corporate income tax, custom and excise duties, co-integration. J E L Classification: O23, E31, C1. Abstract: Taxation is one of the instruments of fiscal policy employed by developing countries to fight inf lation. Taxation as a field of study has grown with many contribu- tions from different fields. The gap within the literature regarding different contexts has inspired researchers to look for further explanations about taxation and its effects on inf lation. Therefore, this paper aims to provide insight into the effects of taxation policy on inf lation in Nigeria. To achieve this, a quantitative research is carried out. Em- pirical test indicates that taxation had negative significant effect on inf lation both in the short run and in the long run. All the components of taxation did not Granger-cause inf lation in Nigeria. Additionally, according to the results, taxation is an effective hedge against inf lation in the country.  Introduction Maintenance of price stability continues to be dominant objective of fiscal pol- icy for most countries in the world today especially developing country like Tajudeen Adejare Adegbite8 Nigeria. This perhaps showed the prominence given to price stability in con- duct of fiscal policy with the disposition and mindset of promoting sustaina- ble growth and development as well as strengthening the purchasing power of the domestic currency amongst others. Nigeria government employs taxation targeting framework in the conduct of its fiscal policy. This is based on the as- sumption of a stable and predictable relationship between taxation and inf la- tion. Taxation as a fiscal tool available to the government can be used to fight inf lation and its undesirable trends (Caesar, 2013). Taxes have an important place in their programs and they are a powerful tool for achieving main goals in the economy. According to Caesar (2013), an increase in the rate of taxes during inf la- tionary period can reduce expenditure from the private sector thereby reduc- ing pressure on the market and curtailing inf lation. In Keynesian economics framework, taxes are determinants of aggregate demand. So, increases in taxes lead to lesser demand (as consumers will have less money to spend) and, hence, their impact tend to be def lationary. Similarly, it can be argued that tax cuts lead to more consumers spending and their impact tend to be inf lationary. But aggregate supply remains completely unaffected by changes in taxes. On the other hand, those who discarded the above framework believe that from a sup- ply side perspective, increases in taxes tend to increase the production cost and the burden is passed on from the producers to the consumers in the form of indirect taxes. So, the prices of goods and services will rise leading to inf la- tion. With this divergent outlooks, this study examined the effect of taxation on inf lation in Nigeria. Based on the objective of the study, the following hypoth- eses were tested: Ho1: Taxation has no significant effect on inf lation in Nigeria. Ho2: Taxation has no long run effect on inf lation in Nigeria. Ho3: Taxation has no causality with inf lation in Nigeria. Literature review and theoretical frame work Concept of Inf lation and Taxation Inf lation has been defined as a persistence rise in the general price level of broad spectrum of goods and services in a country over a long period of time. It has been widely described as an economic situation when the increase in mon- ey supply is faster than the new production of goods and services in the same an Evolution of thE EffECt of taxation PoliCy… 9 economy (Piana, 2001). According to Ojo (2000), inf lation as general and per- sistent increase in the prices of goods and services in an economy. Inf lation rate is measured as the percentage change in the price index (consumer price index, wholesale price index, producer price index etc). There are three major types of inf lation according to neo-Keynesians. The first is the demand-pull inf lation, which occurs when aggregate demand is in excess of available supply (capacity). This phenomenon is also known as the Phillips curve inf lation. The output gap can result from an increase in govern- ment purchases, increase in foreign price level, or increase in money supply. The second is known as cost-push inf lation, which is referred to inf lation which occurs in the event of a sudden decrease in aggregate supply, owing to an in- crease in the price/cost of the commodity/production where there are no suit- able alternatives (Thomas, 2006). This type of inf lation is becoming more com- mon today than before, as evident in the rising price of housing, energy and food. It is often ref lected in price/wage spirals in firms, whereby workers try to keep up their wages with the change in the price level and employers pass on the burden of higher costs to consumers through increase in prices. The third type, referred to, as structural inf lation, which is built-in inf lation, usually in- duced by changes in monetary policy. Taxation is a system by which government imposed a compulsory levy on individuals, companies, goods and services to raise revenue for its operations, to control inf lation, and to promote social equity through the redistribution of income effect of taxation. In addition, Bhartia (2009) defined tax as a compul- sory levy payable by an economic unit to the government without any corre- sponding entitlement to receive a definite and direct benefit from the govern- ment. Note, the word direct here does not mean a price paid by the tax payer for any definite service rendered or a commodity supplied by the government. Rather it means that the benefits received by tax payers from the government are not related to or based upon the tax paid by the tax payers. This in effect implies that tax is a generalized exaction, which may be levied on one or more criteria upon individuals, groups, or the legal entities. Adegbite and Usman (2017) opined that government employs taxation to steer the economy in a desired direction. If the government wishes to stimu- late the economy, government implement it by cutting taxes. A tax cut enhanc- es the disposable income of the individual. This simple policy prescription of reducing taxes will increase spending, making production to go up and creat- ing employment which will invariably leads to increment in tax revenue. If the Tajudeen Adejare Adegbite10 government wishes to restrain the economy, it could do so by increasing taxes. By so doing disposable income will fall leading to a fall in spending and produc- tion. In this case, a tax increase will shift the consumption function down by the amount of the tax and reduce the level of income by a multiplier effect. A tax cut, on the other hand, raises consumption and exerts a multiplier effect on the level of income (Iniodu, 1996). During a recession (when the economy is def la- tionary) government can stimulate aggregate demand by cutting taxes, which should bring about more jobs and reduce unemployment rate and def lationary gap in the economy. If the economy is inf lationary, to dampen the inf lationary pressure, the policy prescription is to contract the economy indirectly by rais- ing taxes to discourage consumption. Underpinning Theory The expediency theory This theory asserts that every tax proposal must pass the test of practicabil- ity. It must be the only consideration weighing with the authorities in choosing a tax proposal. Economic and social objectives of the state as also the effects of a tax system should be treated as irrelevant. This proposition has a truth in it, since it is useless to have a tax which cannot be levied and collected efficiently. There are pressures from economic, social and political groups. Every group tries to protect and promote its own interests and authorities are often forced to reshape tax structure to accommodate these pressures. In addition, the ad- ministrative set up may not be efficient to collect the tax at a reasonable cost of collection. Taxation provides a powerful set of policy tools to the authorities and should be effectively used for remedying economic and social ills of the so- ciety such as income inequalities, regional disparities, unemployment, cyclical f luctuations, inf lation and so on. Review of empirical studies on the relationship between fiscal policy and inflation in Nigeria Anyanwu (1997) investigated the effect of taxes on inf lation and unemploy- ment rates in Nigeria between 1981 and 1996. Using data on taxes, inf lation and unemployment rates during the period of study, the results of his log-lin- ear regression reveal a positive relationship between taxes and inf lation rate, an Evolution of thE EffECt of taxation PoliCy… 11 but with insignificant coefficient. Based on this result, he concluded that taxes fuelled Nigeria’s inf lation rather that reducing it. On the unemployment rate, his findings reveal that different taxes affect Nigeria’s unemployment for the different period between 1981–1996. He concluded that taxes vary negatively with unemployment, and with the coefficient of unemployment being insignifi- cant. However, the scope of this study is from 1981 to 1996 but it was not ex- tended to 2017. Atan (2013) examined the attempts by successive Nigerian governments to use taxation to inf luence macroeconomic aggregates, especially inf lation and unemployment, and covers the period 1970 to 2008. It is largely a secondary data study, focusing on the extent to which these variables responded to chang- es in government’s tax measures. Data on these variables for the thirty-nine year period were analysed using both descriptive and inferential statistical techniques. The Ordinary Least Square (OLS) method was used for the estima- tions. The analysis shows that the historical trends in inf lation and unemploy- ment showed no significant response to tax policy between the period 1970 and 2008. Periods of lower taxes recorded lower inf lation rate in some years and higher inf lation rates in some years. Unemployment rates increased steadily in some years whether taxes were raised or lowered. Government in some years lowered taxes amidst high inf lation rates in the economy. Taxes have a negative effect on the inf lation rate in line with the theory, but with insignificant coef- ficient. In the case of unemployment rate, the regression results show a nega- tive relationship between tax policy and unemployment, but with insignificant coefficient, which is contrary to the theory. The analysis shows that tax policy was not effective in controlling inf lation, and tackling unemployment problems in the economy during the period of study largely because of inconsistency in the use of tax measures. It is recommended that government apply tax meas- ures much more carefully than was observed over the period studied. However, this study was confined to 2008, it was not expanded to 2017. Also, the study employed only Ordinary Least Square (OLS) method for the estimations. Per- haps, the results was spurious because of the failure to carry out further tests. Olaoye (2016) examined the determinants of VAT, Interest rate, Inf lation and Inf luence on revenue generation in Nigeria. Secondary data were gathered from CBN statistics bulletins that cutacross 1990 and 2012. This period was selected in order to capture the inf lation, Interest rate, prior, during and post implementation of VAT. Data were analyzed with the use of descriptive analysis and Johansen co-integration test. The descriptive statistics gave a clear picture Tajudeen Adejare Adegbite12 of the distribution and range of all the series, there exist no significant relation- ship between VAT and INT. However, there is significant positive relationship between VAT & INF both on the short and long run, while interest rate exert negative inf luence on Inf lation both on the short and long run. There is strong and positive relationship between VAT and revenue generation in Nigeria. It was recommended that government should provide effective anti-inf lationary policy to cushion the inf lationary tendencies of value added tax in the country and regulate the rise in the level of interest rate in order not provoke price in- stability and at the same time maintain the current level of improvement in the revenue generation in the country. This study used only a single component of taxation (VAT) to generalize the effect of taxation on inf lation rate with re- stricted scope of 2012. Akhor, Atu and Ekundayo (2016) examined the impact of indirect tax rev- enue on economic growth in Nigeria. The study used value added tax revenue and custom and excise duty revenue as independent variables and economic growth was proxy with real gross domestic product as the dependent variable. The study employ secondary data collected from Central Bank of Nigeria sta- tistical bulletin for the period covering 1993 to 2013 for the empirical analysis using the convenient sampling techniques. The data were analyzed using de- scriptive statistics, correlation, unit root test, cointegration test and error cor- rection model regression. The result revealed that value added tax had a nega- tive and significant impact on real gross domestic product. In the same vein, past custom and excise duty had a negative and weakly significant impact on real gross domestic product. The Error Correction Model (ECM (-1)) coefficient had a correct negative and statistically significant sign. This shows that short- run deviation can be quickly corrected. The Durbin-Watson positive value indi- cates the absence of autocorrelation in the model. The study recommended that tax administrative loopholes should be plugged for tax revenue to contribute immensely to the development of the economy since past value added tax and custom and excise duty had a significant impact on economic growth. However, this study was restricted to the effect of indirect taxes on revenue generation but the scope was not stretched to inf lation. From the review of previous works, the gaps identified are scope, method- ology and conceptual gap. This is because all the studies seen and reviewed are conducted in Nigeria with different scope, methodology and concepts, and the findings may not be generalized in wider perspectives. Thus, this study is an Evolution of thE EffECt of taxation PoliCy… 13 unique and intends to contribute to knowledge by investigating the effect of taxation on inf lation in Nigeria. The research methodology and the course of the research process Secondary data were used in this study. The relevant data for the study were obtained from Central Bank of Nigeria (CBN) Statistical Bulletins and Federal Inland Revenue Services Bulletin from 1970 to 2017. Regression analysis tech- nique was used to measure the effects of independent variables on dependent variable while Units root test, Johansen co-integration, Vector Error-Correc- tion Model, and Granger causality tests were employed to determine the long run relationship and causality links among the variables. Model Specification Nigeria’s inf lation rate has been increasing persistently for years now, and even exceeded 16 percent in 2017, and a real significant decrease is nowhere in sight. The bigger problem is its unsteadiness, however, an inf lation rate that is active in Nigeria is usually a sign of a struggling economy, causing prices to f luctu- ate, and unemployment and poverty to increase. The formulation of the model was based on theory that taxation is an effective hedge against inf lation, that is taxation and inf lation are inversely related. Inf lation (INFL) was employed as the explained variable while the explanatory variables are petroleum profit tax (PPT), Value added tax (VAT), corporate income tax (CORPT), and Custom and Excise duties (CUSEXC). This can be specifically stated as: struggling economy, causing prices to fluctuate, and unemployment and poverty to increase. The formulation of the model was based on theory that taxation is an effective hedge against inflation, that is taxation and inflation are inversely related. Inflation (INFL) was employed as the explained variable while the explanatory variables are petroleum profit tax (PPT), Value added tax (VAT), corporate income tax (CORPT), and Custom and Excise duties (CUSEXC). This can be specifically stated as; � = � (�1��2��3��4�μ) The independent variable m1 � �4 The dependent variable � A regression model relates � to a function of � and μ Error term is denoted as μ. ����� � � ��� �� + ��1��� � ��� + ��2��� � ��� + ��3����� � ��� + ��4������ � ��� + μ3 (1) Transforming equation (1) to the natural logarithm it changed to �������� � � ��� �� + ��1������ � ��� + ��2������ � ��� + ��3�������� � ��� + ��4��������� � ��� + μ4 (2) Basic VECM is ��� �� ������ + ∑ ������ +∈������� (3) where y is a (K x 1) vector of I(1) variables, and  are (Kx r) parameter matrices with rank r < K, 1,.,.., p-1 are (K x K) matrices of parameters, and t is a (K x1) vector of normally distributed errors that is serially uncorrelated but has contemporaneous covariance matrix. Results and discussion Table 1. The Effect of Taxation on inflation rate in Nigeria Dependent variable Independent variables Coefficient Standard error T P>/T/ (95% conf. Interval) LOGPPT -.2007604 .1912754 -4.28 0.005 -.6084542 .2069334 The independent variable m1 – m4 The dependent variable Y A regression model relates Y to a function m of and µ Error term is denoted as µ. struggling economy, causing prices to fluctuate, and unemployment and poverty to increase. The formulation of the model was based on theory that taxation is an effective hedge against inflation, that is taxation and inflation are inversely related. Inflation (INFL) was employed as the explained variable while the explanatory variables are petroleum profit tax (PPT), Value added tax (VAT), corporate income tax (CORPT), and Custom and Excise duties (CUSEXC). This can be specifically stated as; � = � (�1��2��3��4�μ) The independent variable m1 � �4 The dependent variable � A regression model relates � to a function of � and μ Error term is denoted as μ. ����� � � ��� �� + ��1��� � ��� + ��2��� � ��� + ��3����� � ��� + ��4������ � ��� + μ3 (1) Transforming equation (1) to the natural logarithm it changed to �������� � � ��� �� + ��1������ � ��� + ��2������ � ��� + ��3�������� � ��� + ��4��������� � ��� + μ4 (2) Basic VECM is ��� �� ������ + ∑ ������ +∈������� (3) where y is a (K x 1) vector of I(1) variables, and  are (Kx r) parameter matrices with rank r < K, 1,.,.., p-1 are (K x K) matrices of parameters, and t is a (K x1) vector of normally distributed errors that is serially uncorrelated but has contemporaneous covariance matrix. Results and discussion Table 1. The Effect of Taxation on inflation rate in Nigeria Dependent variable Independent variables Coefficient Standard error T P>/T/ (95% conf. Interval) LOGPPT -.2007604 .1912754 -4.28 0.005 -.6084542 .2069334 (1) Tajudeen Adejare Adegbite14 Transforming equation (1) to the natural logarithm it changed to struggling economy, causing prices to fluctuate, and unemployment and poverty to increase. The formulation of the model was based on theory that taxation is an effective hedge against inflation, that is taxation and inflation are inversely related. Inflation (INFL) was employed as the explained variable while the explanatory variables are petroleum profit tax (PPT), Value added tax (VAT), corporate income tax (CORPT), and Custom and Excise duties (CUSEXC). This can be specifically stated as; � = � (�1��2��3��4�μ) The independent variable m1 � �4 The dependent variable � A regression model relates � to a function of � and μ Error term is denoted as μ. ����� � � ��� �� + ��1��� � ��� + ��2��� � ��� + ��3����� � ��� + ��4������ � ��� + μ3 (1) Transforming equation (1) to the natural logarithm it changed to �������� � � ��� �� + ��1������ � ��� + ��2������ � ��� + ��3�������� � ��� + ��4��������� � ��� + μ4 (2) Basic VECM is ��� �� ������ + ∑ ������ +∈������� (3) where y is a (K x 1) vector of I(1) variables, and  are (Kx r) parameter matrices with rank r < K, 1,.,.., p-1 are (K x K) matrices of parameters, and t is a (K x1) vector of normally distributed errors that is serially uncorrelated but has contemporaneous covariance matrix. Results and discussion Table 1. The Effect of Taxation on inflation rate in Nigeria Dependent variable Independent variables Coefficient Standard error T P>/T/ (95% conf. Interval) LOGPPT -.2007604 .1912754 -4.28 0.005 -.6084542 .2069334 (2) Basic VECM is struggling economy, causing prices to fluctuate, and unemployment and poverty to increase. The formulation of the model was based on theory that taxation is an effective hedge against inflation, that is taxation and inflation are inversely related. Inflation (INFL) was employed as the explained variable while the explanatory variables are petroleum profit tax (PPT), Value added tax (VAT), corporate income tax (CORPT), and Custom and Excise duties (CUSEXC). This can be specifically stated as; � = � (�1��2��3��4�μ) The independent variable m1 � �4 The dependent variable � A regression model relates � to a function of � and μ Error term is denoted as μ. ����� � � ��� �� + ��1��� � ��� + ��2��� � ��� + ��3����� � ��� + ��4������ � ��� + μ3 (1) Transforming equation (1) to the natural logarithm it changed to �������� � � ��� �� + ��1������ � ��� + ��2������ � ��� + ��3�������� � ��� + ��4��������� � ��� + μ4 (2) Basic VECM is ��� �� ������ + ∑ ������ +∈������� (3) where y is a (K x 1) vector of I(1) variables, and  are (Kx r) parameter matrices with rank r < K, 1,.,.., p-1 are (K x K) matrices of parameters, and t is a (K x1) vector of normally distributed errors that is serially uncorrelated but has contemporaneous covariance matrix. Results and discussion Table 1. The Effect of Taxation on inflation rate in Nigeria Dependent variable Independent variables Coefficient Standard error T P>/T/ (95% conf. Interval) LOGPPT -.2007604 .1912754 -4.28 0.005 -.6084542 .2069334 (3) where y is a (K x 1) vector of I(1) variables, α and β are (Kx r) parameter ma- trices with rank r < K, Γ1,.,.., Γp-1 are (K x K) matrices of parameters, and εt is a (K x1) vector of normally distributed errors that is serially uncorrelated but has contemporaneous covariance matrix. Results and discussion Table 1. The Effect of Taxation on inf lation rate in Nigeria Dependent variable Independent variables Coefficient Standard error T P>/T/ (95% conf. Interval) LOGINFL LOGPPT -.2007604 .1912754 -4.28 0.005 -.6084542  .2069334 LOGVAT -.0947098 .5096113 -3.19 0.013 -1.180921   .9915011 LOGCORPT -.3071204 .1554908 -2.98 0.016 -.6385412  .0243004 LOGCUSEXC .5022426 .6038969 -3.59 0.008 -.7849331 1.789418 CONSTANT 4.18516 2.212975 8.89 0.000 -.5316856 8.902005 R-squared = 0.3665 Adj R-squared = 0.2975 Prob > F = 0.1222 Root MSE = .58681 F( 4, 15) = 2.17 S o u r c e : author’s computation (2018). The table 1 shows the effect of taxation on inf lation rate in Nigeria. 1% increase in the Petroleum profit tax (PPT) reduces inf lation rate (INFL) by 0.2%. This suggests a negative significant effect the rate of PPT on INFL. The outcome is significant (β=-.2007604, t = -4.28, P>|t| =0.005). One percent increase in Val- an Evolution of thE EffECt of taxation PoliCy… 15 ue added tax (VAT) also reduces INFL by 0.09 %.This means VAT imparted INFL negatively and significantly (β=-.0947098, t = -3.19, P>|t| =0.013). That is if VAT increases INFL reduces. More so, 1% increase in the corporate income tax (CORPT) reduces INFL by 0.3%. This suggests a negative significant effect CORPT on INFL (β=-.3071204, t = -2.98, P>|t| =0.016). Contrarily, 1% increase in Custom and excise duty (CUSEXC) increases INFL by 0.5%. This reveals a posi- tive significant effect of CUSEXC on INFL (β=.5022426, t = -3.59, P>|t| =0.008). This is suggesting that if CUSEXC in Nigeria increases, INFL also increase. The R2 coefficient (0.3665) which is the coefficient of determination indi- cates that the Explanatory variables accounted for 36.7% of the variation in the inf luence of taxation on inf lation rate in Nigeria for the period under study. Given the adjusted R2 of 29.75% which significant, it predicts the independence variables incorporated into this model have been able to determine variation of taxation on inf lation rate to 29.75%. It is also indicates that taxation accounted for 29.75% of the variation in the inf luence on inf lation rate in the short-run. This hypothesis is to test whether or not there is significant effect of taxation on Inf lation rate in Nigeria. From the decision rule above, because the p-val- ue for the alternative hypothesis equals 0.0000 which is less than 0.05, there- fore the null hypothesis is rejected while the alternative hypothesis is upheld. Therefore taxation has significant effect on Inf lation rate in Nigeria. Taxation is effective hedge against inf lation. Table 2. Unit Root Test Variables ADF stat 1% critical value 5% critical value 10% critical value Order of integration Remark INFL 3.306 -3.628 -2.950 -2.608 I(0) Stationary PPT 3.892 *** -3.655 -2.961 -2.613 I(1) Stationary VAT 4.703*** 3.750 3.000 -2.630 I(1) Stationary CORPT 3.520*** -3.655 -2.961 -2.613 I(1) Stationary CUSEXC 2.681 3.750 3.000 -2.630 I(1) Stationary (*), (**) and (***) means stationary at 1%, 5% and 10% respectively. S o u r c e : author’s computation (2018). It has been a common practice, in applied econometric analysis, to test the or- der of integration of time series. The study applies ADF unit root test, at level and at the first difference of the time series with assumption of no drift and Tajudeen Adejare Adegbite16 tend, to have the information about the order of a time series. ADF test results reported in the table 2 are evident that we are unable to reject the null hypoth- esis for the presence of a unit root at level of each of the time series. All of the time series are stationary at their first difference. Since each of the time se- ries is stationary at its first difference so the variables are cointegrated. There exists an equilibrium or long run relationship between the time series if all the variables are integrated of the same order, Engle and Granger (1987). The study applies Johansen cointegration technique. Johansen (1991) introduced, in the multivariate cointegration test, the two likelihood ratio tests (Maximumei- gen value and Trace tests) to find out the number of cointegrating vectors. All the variables are stationary at first level which exhibited that there is long run relationship between taxation and inf lation in Nigeria. Table 3. Selection-Order Criteria Lag LL LR Df P FPE AIC HQIC SBIC 0 -2407.75 1.7e+46 120.638 120.714 120.849 1 -2312.99 189.52 25 0.000 5.2e+44 117.149 117.607 118.416 2 -2239.1 147.78 25 0.000 4.8e+43 114.705 115.545 117.027 3 -2130.14 217.92 25 0.000 8.6e+41 110.507 111.728 113.885 4 -1888.59 483.1* 25 0.000 2.4e+37* 99.6795* 101.282* 104.113* Endogenous: INFL, PP, VAT, CIT, CUSEXC. Exogenous: _cons. S o u r c e : author’s computation (2018). The Hannan–Quinn information criterion (HQIC) method, Schwarz Bayesian information criterion (SBIC) method, and sequential likelihood-ratio (LR) test all chose four lags, as indicated by the “*” in the output. Both the SBIC and the HQIC estimators suggest that there are four cointegrating equations in the bal- anced-growth data. Having determined that there is a cointegrating equation among the INFL, PPT, VAT, CORPT and CUSEXC series, the parameters of a bi- variate cointegrating VECM for these four series by using Vector error-correc- tion model were estimated table 3. Lags four was used for this bivariate mod- el because the Hannan–Quinn information criterion (HQIC)method, Schwarz Bayesian information criterion (SBIC) method, and sequential likelihood-ratio (LR) test all chose four lags, as indicated by the “*” in the output. an Evolution of thE EffECt of taxation PoliCy… 17 Table 4. Vector Autoregression Equation Parms RMSE R sq chi2 P>chi2 INFL 21 16.3943 0.4947 39.16547 0.0064 PPT 21 45422 0.9994 68778.43 0.0000 VAT 21 42103.2 0.9997 130225.6 0.0000 CORPT 21 53761.7 0.9996 110487.3 0.0000 CUSEXC 21 28131.5 0.9997 128997.3 0.0000 Log likelihood = -1888.591 Det(Sigma_ml) = 7.04e+34 AIC = 99.67953 HQIC = 101.2825 SBIC = 104.1128 S o u r c e : author’s computation (2018). In order to confirm the output result of Selection-order criteria in selecting the appropriate Lag, Vector Autoregression was also tested. Lags four was also chosen for this model because the Hannan–Quinn information criterion (HQIC) method, Schwarz Bayesian information criterion (SBIC) method, and sequen- tial likelihood-ratio (LR) test all confirmed four lags as indicated by in the table 4 above. Table 5. Vector Error-Correction Model Equation Parms RMSE R sq chi2 P>chi2 D_ INFL 7 15.9068 0.0048 .1688344 1.0000 D_ PPT 7 457863 0.3381 17.87596 0.0125 D_ VAT 7 587331 0.7180 89.09794 0.0000 D_ CORPT 7 673077 0.7466 103.1216 0.0000 D_ CUSEXC 7 399804 0.7072 84.53813 0.0000 Log likelihood = -2387.262 Det(Sigma_ml) = 1.61e+43 AIC = 115.5363 HQIC = 116.1277 SBIC = 117.1498 S o u r c e : author’s computation (2018). Tajudeen Adejare Adegbite18 Table 6. Johansen normalization restriction imposed Beta Coefficient Std Error Z P>|z| [95% Conf. Interval] _ce1 INFL 1 . . . . PPT -.000014 .0000262 -5.53 0.000 -.0000654 .0000374 VAT -.0005395 .0001129 -4.78 0.000 -.0007607 -.0003182 CORPT -.0003488 .0000466 7.49 0.000 .0002575 .0004401 CUSEXC -.0005504 .0002383 -2.31 0.021 -.0010174 -.0000833 -CONS -9.071605 . . . . S o u r c e : author’s computation (2018). Table 5 and table 6 contained information about the sample, the fit of each equation, and overall model fit statistics. The first estimation table contains the estimates of the short-run parameters, along with their standard errors, z statistics, and confidence intervals. The three coefficients on L. ce1 are the parameters in the adjustment matrix for this model. The second estimation table contains the estimated parameters of the cointegrating vector for this model, along with their standard errors, z statistics, and confidence intervals. According to Johansen normalization restriction imposed table, one percent in- crease in PPT reduces INFL by 0.00014% in the long run, this shows that there is a negative effect of PPT on INFL. Also, one percent increase in VAT reduces INFL by -.0005395% in the long run, this also shows a negative effect of VAT on INFL in the long run. In the same vein, one percent increase in CORPT, reduces INFL by -.0003488% in the long run, this also shows that there is a negative sig- nificant effect of PPT on INFL in the long run. More so, one percent increase in CUSEXC, reduces INFL by .0005504% in the long run, this also shows a negative effect of CUSEXC on INFL. in the long run. Coefficient is statistically significant confirmed by P>|z| which is 0.000. Overall, the output indicates that the model fits well. The coefficient on INFL in the cointegrating equation is statistically significant. an Evolution of thE EffECt of taxation PoliCy… 19 Table 7. Johansen Tests for Co-integration Rank Eigen Value Parm LL Trace statistic 5% critical value 1% critical Eigen Value 0 - 80 -2147.0927 517.0043 68.52 76.07 - 1 0.99649 89 -2034.0335 290.8860 47.21 54.46 0.99649 2 0.98459 96 -1950.5767 123.9723 29.68 35.65 0.98459 3 0.86830 101 -1910.0323 42.8836 15.41 20.04 0.86830 4 0.65732 104 -1888.6129 0.0448*1*5 3.76 6.65 0.65732 5 0.00112 105 -1888.5905 0.00112 S o u r c e : author’s computation (2018). Table 7 produced information about the sample, the trend specification, and the number of lags included in the model. The main table contains a separate row for each possible value of r, the number of cointegrating equations. When r = 3, all three variables in this model are stationary. In this study, because the trace statistic at r = 0 of 517.0043 exceeds its critical value of 68.52, the null hypothesis of no cointegrating equations are rejected. Similarly, because the trace statistic at r = 1 of 290.8860 exceeds its critical value of 47.21, the null hypothesis that there is one or fewer cointegrating equation is also rejected. In the same vein, because the trace statistic at r = 2 of 123.9723 exceeds its criti- cal value of 29.68, the null hypothesis that there is two or fewer cointegrat- ing equation is also rejected. The trace statistic at r = 3 of42.8836 exceeds its critical value of 15.41, the null hypothesis that there is three or fewer cointe- grating equation is also rejected. In contrast, because the trace statistic at r = 4 of 0.0448*1*5 is less than its critical value of 3.76, the null hypothesis that there are four or fewer cointegrating equations cannot be rejected. Because Johans- en’s method for estimating r is to accept as the first r for which the null hy- pothesis is not rejected, we accept r = 4 as our estimate of the number of cointe- grating equations between these five variables. The “*” by the trace statistic at r = 4 indicates that this is the value of r selected by Johansen’s multiple-trace test procedure. The eigenvalue shown in the last line of output computes the trace statistic in the preceding line. Tajudeen Adejare Adegbite20 Table 8. Granger causality Wald tests – Causality between Taxation and Inf lation rate Equation Excluded chi2 Df Prob> chi2 Decision INFL PPT 4.8788 4 0.300 PPT does not granger – cause INFL INFL VAT 4.9351 4 0.294 VAT does not granger – cause INFL INFL CORPT 3.4087 4 0.492 CORPT does not granger – cause INFL INFL CUSEXC 4.7069 4 0.319 CUSEXC does not granger – cause INFL INFL ALL 8.6517 16 8.6517 ALL jointly DO NOT granger cause INFL PPT INFL 5.362 4 0.252 INFL does not granger – cause PPT PPT VAT 1350.4 4 0.000 VAT granger – cause PPT PPT CORPT 154.48 4 0.000 CORPT granger – cause PPT PPT CUSEXC 294.45 4 0.000 CUSEXC granger – cause PPT PPT ALL 7565 10 0.000 ALL jointly granger cause PPT VAT INFL 8.2207 4 0.184 INFL does not granger – cause VAT VAT PPT 267.66 4 0.000 PPT granger – cause VAT VAT CORPT 223.09 4 0.000 CORPT granger – cause VAT VAT CUSEXC 1310.5 4 0.000 CUSEXC granger – cause VAT VAT ALL 14808 10 0.000 ALL jointly granger cause VAT CORPT INFL 21.041 4 0.342 INFL does not granger – cause CORPT CORPT PPT 246.22 4 0.000 PPT granger – cause CORPT CORPT VAT 1649.4 4 0.000 VAT granger – cause CORPT CORPT CUSEXC 937.34 4 0.000 CUSEXC granger – cause CORPT CORPT ALL 38403 16 0.000 ALL jointly granger cause CORPT CUSEXC INFL 9.3531 4 0.253 INFL does not granger – cause CUSEXC CUSEXC PPT 257.94 4 0.000 PPT granger – cause CUSEXC CUSEXC VAT 3414.7 4 0.000 VAT granger – cause CUSEXC CUSEXC CORPT 137.42 4 0.000 CORPT granger – cause CUSEXC CUSEXC ALL 37508 16 0.000 ALL jointly granger cause CUSEXC S o u r c e : author’s computation (2018). an Evolution of thE EffECt of taxation PoliCy… 21 The results of the five tests for the first equation is shown in the table 8. The first is a Wald test that the coefficients on the four lags of PPT that appear in the equation for INFL are jointly zero. The null hypothesis that PPT does not Grang- er-cause INFL cannot be rejected because Prob> chi2 is 0.300 which is greater than 0.05, therefore PPT does not granger-cause INFL. Also, the null hypothesis that the coefficients on the four lags of VAT in the equation for INFL are jointly zero cannot be rejected because Prob> chi2 is 0.294 which is greater than 0.05. So the hypothesis that VAT does not Granger cause INFL cannot be rejected, therefore VAT does not granger-cause INFL. The null hypothesis is that CORPT does not Granger-cause INFL cannot be rejected because Prob> chi2 is 0.492, which is greater than 0.05 therefore CORPT does not granger-cause INFL. More so, the null hypothesis that the coefficients on the four lags of CUSEXC in the equation for INFL are jointly zero cannot be rejected because Prob> chi2 is 0.319, which is greater than 0.05. Therefore CUSEXC does not granger-cause INFL. The fifth null hypothesis is that the coefficients on the four lags of all the other endogenous variables are jointly zero. This null hypothesis cannot be re- jected in the sense that Prob> chi2 is 8.6517which is greater than 0.05, that is that PPT, VAT, CORPT and CUSEXC, jointly, does not Granger-cause INFL. There- fore the null hypothesis is accepted, alternative hypothesis is rejected that is there is no causality between taxation and inf lation rate. Table 9. Direction of Causality between Taxation and Inf lation rate Equation Excluded chi2 Df Prob> chi2 Decision INFL PPT 4.8788 4 0.300 PPT does not granger- cause INFL PPT INFL 5.362 4 0.252 INFL does not granger- cause PPT INFL VAT 4.9351 4 0.294 VAT does not granger - cause INFL VAT INFL 8.2207 4 0.084 INFL does not granger- cause VAT INFL CORPT 3.4087 4 0.492 CORPT does not granger- cause INFL CORPT INFL 21.041 4 0.342 INFL does not granger- cause CORPT INFL CUSEXC 4.7069 4 0.319 CUSEXC does not granger – cause INFL CUSEXC INFL 9.3531 4 0.253 INFL does not granger- cause CUSEXC S o u r c e : author’s computation (2018). Tajudeen Adejare Adegbite22 Table 9 showed the results of the causality analysis among petroleum prof- it tax (PPT), value added tax (VAT) corporate income tax (CORPT), custom and excise duties (CUSEXC) and inf lation rate (INFL). The results showed that there was no causality between petroleum profit tax (PPT) and inf lation rate (INFL). Also, the findings revealed that the causality did not run from value added tax (VAT) to inf lation rate (INFL) and vice visa. That is value added tax did not granger cause inf lation rate (INFL), and inf lation rate did not granger cause value added tax. Furthermore corporate income tax (CORPT) with the Chi-square statistic (3.4087) and the probability value (0.492), being statisti- cally insignificant, did not granger cause INFL. In the same vein, INFL did not granger cause CORPT. More so, it was revealed that custom and excise duties (CUSEXC) with the Chi-square statistic 4.7069 and the probability value 0.319, being statistically insignificant, did not granger cause INFL. Also, INFL did not granger caused CUSEXC. Therefore the null hypothesis is accepted, alternative hypothesis is rejected, that is there is no causality between taxation and inf la- tion rate in Nigeria.  Summary and conclusion This study examined the effects of taxation on inf lation in Nigeria. It also looked at the direction of causality between taxation and inf lation employing the method of Johansen co-integration and the Granger causality tests using data spanning the period 1970-2017. Results showed that PPT has negative sig- nificant effect on INFL in Nigeria. VAT, and CORPT also had negative significant effect on INFL. But CUSEXC has the positive insignificant effect on INFL both in the short run and in the long run. All the components of taxation had no causal- ity link with inf lation in Nigeria because PPT, VAT, CORPT and CUSEXC, jointly, did not Granger-cause INFL. Conclusively, taxation had negative significant ef- fect on inf lation in Nigeria both in the short run and in the long run. Taxation is an effective hedge on inf lation. That is taxation had been employed by the gov- ernment to subside inf lation in the country. There is no causality relationship between Taxation and inf lation that is taxation did not granger cause inf lation in Nigeria and vice visa. It is recommended that taxation should be moderate so that the disposable income of both the individual and corporate organiza- tion left after tax fulfillment will breed saving so as to create more investments which will invariably generate more employment opportunities and curb inf la- tion in the country. Government should devise another means of fighting inf la- an Evolution of thE EffECt of taxation PoliCy… 23 tion apart from involvement of taxation so that it will not provoke price insta- bility and standard of living encroachment.  References Adegbite, T.A., & Usman, O.A. (2017). Empirical Analysis of the Effect of Taxation on In- vestment in Nigeria. International Journal in Commerce, IT & Social Sciences, 4(8), 1-11. Akhor, S.O., Atu E.C., & Ekundayo, O.U. (2016). The Impact of Indirect Tax Revenue on Economic Growth: The Nigeria Experience. Igbinedion University Journal of Account- ing, 2(08), 62-87. Anyanwu, J.C. (1997). Nigerian Public Finance. Onitsha: Joanne Educational Publishers. Atan, J.A. (2013). Tax Policy, Inf lation and Unemployment in Nigeria (1970–2008). Euro- pean Journal of Business and Management, 5(15), 114-129 Bhartia, H.L. (2009). Public Finance. 13th Edn. New Delhi: Vikas Publishing House PVT Ltd. Engle, R.F., & Granger, C.W.J. (1987). Co-integration and error correction: Representa- tion, Estimation, and Testing. Econometrica, 5(5), 251-276. Iniodu, P.U. (1996). Fundamentals of Macroeconomics. Uyo: Centre for Development Studies, University of Uyo. Johansen, S. (1991). Estimation and Hypothesis Testing of Cointegration Vectors in Gaussian vector Autoregressive Models. Econometrica, 5(9), 1551-1580. Ojo, M.O. (2000). The role of the Autonomy of the Central Bank of Nigeria (CBN) In Pro- moting Macroeconomic Stability. Central Bank of Nigeria Economic and Financial Re- view, 38(1). Olaoye, C.O. (2016). Determinants of Value added tax, Interest rate, Inf lation and In- f luence on Revenue Generation in Nigeria. International Journal of Economics, Com- merce and Management, 4(10), 322-338. Piana, V. (2001). Inf lation Economics. Web Institute. Thomas, P. (2006). Does the US have a Handle on Inf lation? Street Insight.