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Empirical Research on the Relationship between Financial Development and Economic Growth: Based on the Time Series Analysis of Hubei Province SUN Yachao School of Economics, Wuhan University of Technology, P.R.China, 430070 Abstract It is a relatively mature theory that Finance should make mutual development with economy. Based on this, the paper using the methods of Johansen cointegration-test and Granger-causality-test investigates the relationship between financial development and economic growth of Hubei province for the first time, and hopes to provide policy support for the local government’s decision-making. And that, the research has far more meaning for the balancing of the regional development. Key words Hubei Province, Johansen-cointegration-test, Granger-causality-test,Financial Development, Economic Growth Since the reform and opening, the economic and financial industries in Hubei province have made rapid progress. GDP has increased from 82.438 billion yuan in 1990 to 749.70 billion yuan in 2006, and maintained a high annual growth rate. Particularly, finance becomes an important tool in macro economic control and an essential lever in the distribution of social resources. The financialization trend of economy is becoming increasingly obvious. Therefore, it’s of far reaching importance to make research on the relationship between finance and economy in Hubei province, and it’s also an important factor that cannot be ignored in the implementation of Central Rise Strategy. In order to provide an experience support for the strategy, this paper using the methods of Johansen cointegration-test and Granger-causality-test investigates the relationship between financial development and economic growth of Hubei province for the first time. 1 Introduction In recent years, researches about the affect of financial development to economic growth have attracted universal attention in the world. Many studies indicate that a sound financial support system may reduce the cost of information and transaction; and that affect the saving rate, invest decision-making, technology innovation and economic growth rate (Levine 1997). But it is unambiguous that different economic developing stage calls for the different financial structure, that is, financial structure tends to exert influence on stable and rapid economic growth via waking on capital formation. For example, when dwelling on capital accumulation, people prefer to fling more energy into capital externalities or stable returns than non-renewable elements to weight the growth rate of per capital GDP (P. Romer, 1986; R. Lucas, 1988; S. Rebelo, 1991). Here is two ways for the financial system to affect the capital accumulation: one is changing saving rate, the other is saving reallocation; furthermore, it can also reach the goal via altering the technology innovation rate, namely, only probing into the creation of the new technics or the new products (Romer, 1990; Grossman, G. &E. Helpman, 1991; Aghion P& Howitt P, 1992). Based on the initial work by Goldsmith (1969), empirical research on the relationship between financial development and economical growth has been deepened. Levine’s research (1997), data rooted in the year of 1960 1989 from 80 countries, indicates that financial deepening and economic growth have the positive relationship. Kul B. Luintel & Mosahid Khan (1999) using the methods of Var and cointegration test got the conclusion that financial development and economical growth have the mutual causality. Moshin & Abdelhak (2000) using the method of 2SLS got the conclusion that financial development and economical growth have the positive relationship. By the time series data, Adolfo Sachsida (2001) using the method of Granger causality test got the conclusion that financial development and economical growth have the mutual causality. By the panel data, Beck & Levine (2002) , - 136 and Noman Loayza & Romain Ranciere (2002) using the method of GMM got the conclusion that financial deepening accelerates the economic growth at some degree, etc… It is obvious that macro layer analysis makes up the mainstream, yet ignoring the regional layer analysis of the relationship between financial development and economical growth. Hereby, the paper using the methods of Johansen cointegration-test and Granger-causality-test investigates the relationship between financial development and economic growth of Hubei province for the first time, and hopes to provide policy support for the local government’s decision-making. And that, the research has far more meaning for the balancing of the regional development. 2 Variable Description This paper is planning to use the methods of Johansen cointegration-test and Granger-causality-test to investigate the relationship between finance and economic growth of Hubei province, in order to uncover the relationship entirely and realistically and provide a theory and experience support for the policy decision in Hubei financial development and economic growth. 2.1 Data selection The selection of data bases on following three principles: one is the availability, namely, data like GDP, CPI index and etc can be collected from China Financial Yearbook, China Statistic Yearbook, China economic Yearbook and relating statistic websites; another is the continuity, namely it allows of no absence of data in any year of the period; the last is the realistic meaning, namely considering the realities of the country and the province, for example, the stock market in China is now paying more attention to investors than capital chaser, yet it still cannot reach the goal and is now deviating from the national economy growth, which greatly weakens the realistic meaning of the data. 2.2 Index selection Taking the home and abroad scholars’ studies on the relationship between finance and economic growth for references, we use the following empirical indexes: Index of Deposit This index is defined as deposit in saving bank over GDP, using the amount of deposit to reflect the state of financial operation. In undeveloped countries, it’s to a great deal supply-oriented not demand-oriented that contributes to the growth of economy, and capital market is small, so this index can reflect the running of economy indirectly. Index of Loan This index is defined as credit amount over GDP, which represents an important capital source in undeveloped countries. So it’s often regarded as an essential service to push the economic growth which has a close relationship with economy. Index of RPI (Retail Price Index) We select this index based on the fact that the price index often greatly influences the GDP growth rate. By this index, the influence can be eliminated. ⑴ ⑵ ⑶ 3 Cointegration Test The purpose of empirical test is to make regression analysis on the historical data and find out a suitable model, to perform its function of forecasting. However, there is a premise for regression analysis that the time series selected should be stable, or it’ll become the so-called spurious regression. Cointegration Test can combine the virtues in the short-term dynamic model and the long-term equilibrium model in time series analysis, and so provides a good solution for the modeling of unstable time series. And that is the reason this methods be selected. 3.1 Unit Root Process Prior to testing for cointegration, the time series properties of the variables need to be examined. In testing for stationarity, the augmented Dickey-Fuller [1979] (ADF) test was implemented. Here the variables include GDP, Deposit, Loan and RPI, and the result is given in table 1. 137 Variable ADF test result GDP -2.3371 Deposit 3.2485 Loan -2.0572 RPI -2.6746 Note: Table 1 The Result of ADF Test on the Original Sequence Critical Testing type value Conclusion D.W. R2 c, t, k (5% level) ( ) (c, t, 1) (c, t, 1) (c, t, 1) (c, t, 1) F-test -3.8288 unstable 0.5470 1.4343 3.6225 -3.8288 unstable 0.8735 1.9408 20. 7103 -3.8288 unstable 0.6115 2.1626 4.7219 -3.8288 unstable 0.5776 2.1189 4.1024 ⑴ c and t represent constant term and trend term, and k represents the number of lagging phase. ⑵ R is the determination coefficient, F tests whether there exists heteroscedasticity. ⑶ The critical value in the table is figured out by the data given by Mackinnon. ⑷ We use the software of EViews 3.1 for data processing and calculating. 2 For the variables of △GDP, △Deposit, △Loan and △RPI, the test result is given in table 3. Table 2 ADF Test Result on the First-order Difference Sequence Variable ADF test result Testing type c, t, k ( ) (c, t, 1) (c, t, 2) (c, t, 0) (c, t, 1) △GDP -3.4998 △Deposit -4.2047 △Loan -3.5698 △RPI -4.1921 Note: △ represents difference operator. Critical value (5% level) Conclusion -3.1222 stable -3.8288 stable -3.1222 stable -3.8288 stable R2 D.W. F-test 1.1341 1.2096 0.3028 2.1870 2.1720 0.0833 1.6733 0.9995 1.7058 1.8359 0.0991 0.2686 Table 1 and table 2 show that the sequences of original variables are unstable but their first-order difference sequences are stable, namely they are I(1) sequences. According to the theory of cointegration, if the variable sequences are all integrated of the first order, and some certain linear combination of these sequences is stable, then there exists a cointegration relationship between these sequences, which fulfills the requirement of building a cointegrating equations system. 3.2 Cointegration Test on Variables Generally, there are three common methods for cointegration test: first is the augmented Engle-Granger (AEG) test, developed by Engle and Granger, basing on the error term of cointegration regression; second is the Durbin-Watson test, namely conducting hypothesis test by DW value; third is the cointegration test based on VAR, advanced by Johansen and Juselius. In this paper we use the method of Johansen maximum likelihood (Johansen (1988), Johansen and Juselius (1990, 1995)) to test the relationship. The result of cointegration test is given in Table 3. 138 Variable Table 3 Johansen Cointegration Test Result Critical Null Alternative Trace Test Value hypothesis hypothesis Value (1% level) Feature Conclusion There are 2 cointegration 0.3929 r≤1 r=2 6.49 *3.76 relationships. There are 1 0.6276 r=0 r=1 14.37 20.04 GDP cointegration Loan 0.1111 r≤1 r=2 1.53 6.65 relationships. There are 1 0.5965 r=0 r=1 13.32 20.04 GDP cointegration RPI 0.1101 r≤1 r=2 1.52 6.65 relationships. Note: * represents the critical value under 5% level of significance, others represent the critical value under 1% level of significance. r represents the vector number of cointegration sequences. GDP Deposit 0.7437 r=0 r=1 24.19 *15.41 ⑴ ⑵ The result in table4 shows that GDP has a certain cointegration relationship with Deposit, Lo an and RPI. Their OLS estimators are respectively given as follows: ⑴ GDP = 1100.22653 + 0.8674359496 ∗ Deposit R2 R2 R2 (228.4321) (0.0747) [4.8164] [11.6176] = 0.9121, Adj.R = 0.9054 ,DW=0.2671,S.D.=1746.304,F=134.968 ,A.I.C=15.5340 ⑵ GDP = 77.14478541 + 1.221600931 ∗ Loan (124.7262) (0.0429) [0.6185] [28.4701] = 0.9842 , Adj.R = 0.9830 ,DW=0.9130,S.D.=1746.304,F=810.548 ,A.I.C=13.8174 ⑶ GDP = 13226.46485 − 95.7760933 ∗ RPI (5396.537) (51.4421) [2.4509] [-1.8618] = 0.2105 , Adj.R = 0.1498 ,DW=0.1964,S.D.=1746.304,F=3.4664,A.I.C=17.7297 2 2 2 Note: The figures in parenthesis represent the coefficient S.D. dependent var, those in square brackets represent t-statistical amount. ⑴⑶ Equation - suggest, The credibility of the above regression equations is not sufficient, so it’s necessary to process them respectively. The processing way is as follows: First, for GDP and deposit To eliminate the autocorrelation in the error term, we construct a model as follows: Yt = α + β X t + µ t µ t = ρµ t −1 + ε t ,δ , ε t ~ IID(0 2 ),ρ ≠ 0 ⑷ If ρ can be determined, the autocorrelation will be eliminated. Here, we using the Cohrane-Orcutt Iteration Method estimate the value of ρ , and correct the coefficient in equation until the error term converges. The corrected equation ⑴ can be rewritten as: GDP = 3508.4079845 + 0.481034 ∗ Deposit ⑴ ⑸ Here, we have reason to believe that the unit variation of deposit will result in a weak increase of GDP. 139 ⑵ Secondly, for GDP and Loan The error term in equation has an uncertain autocorrelation, but the equation itself is perfect, so we can reckon on that the unit variation of credit loan will result in a strong increase of GDP. Thirdly, for GDP and RPI The preliminary analysis indicates that the credibility of equation is poor. However, combined with the results of the foregoing stability test and cointegration test, we can trust that the poor credibility results from the small sample size. So, the equation still conveys some economic meaning, namely there is negative correlation between RPI and GDP. ⑶ 4 Causality Test Granger causality test is often used for the causal relationship research on time series variables. This paper use the method to test whether financial development contributes to economic growth in Hubei province, and the testing result is given in table 4. Table 4: Granger causality test No. Null hypothesis Lags. F-Statistic Prob. Decision Deposit is not the Granger 7.01275 0.12868 reject 4 reason of GDP GDP is not the Granger reason 4 4.34989 0.19556 accept of Deposit Loan is not the Granger reason 4 4.98589 0.17398 reject of GDP GDP is not the Granger reason 4 2.42002 0.31314 accept of Loan RPI is not the Granger reason 1 11.5135 0.00600 * reject of GDP GDP is not the Granger reason 1 2.15993 0.16966 *accept of RPI Note: * means the decision is made under the significant level of 1%, and the others are made under 5%. When lag.=2, there is bilateral reason relations between Deposit and GDP under the significant level of 5%. Under 1% significant level, GDP is the single direct reason of deposit. When lag.=1, RPI is still the single direct reason of GDP under 5% significant level. ① ② ③ ⑴ ⑵ ⑶ Table5 suggests that, First, there is a mutual-stimulating relationship between households saving deposit and GDP in Hubei province in short run (e.g., 2 years), namely deposit can result in the increase of GDP, and vice versa. But in a long run (e.g., 4 years), deposit can promote the increase of GDP to some extent, yet the increase of GDP may not result in the increase of deposit in financial institutes. Maybe there are two reasons: one is the development of financial market broadens the investment field and people are no longer limited their income to traditional field like deposit; the other is the change of people’s consuming view, like consumption in advance, brings the decrease of bank deposit. Second, bank loans still promote GDP growth in Hubei province. It conforms to the overall conditions in China and most of developing countries, namely supply-oriented economic growth pattern. In addition, as can be seen from the above long-term relationship between deposit and GDP, Hubei province is now undergoing a transformation period from supply-oriented to demand-oriented. Third, time lag of influence that Retail Price Index (RPI) exerts on GDP is relatively short, so price rising will bring some shock on the increase of GDP. This conclusion ties in very well with the effect that inflation exerts on economic growth. 5 Summary and Conclusion 140 Based on the total production of finance and GDP, and the annual data from 1999-2006, this paper using the methods of Johansen cointegration-test and Granger-causality-test investigates the relationship between financial development and economic growth of Hubei province, without regard for the effect of retail price index. The result shows that financial development does promote the increase of GDP; yet the increase of GDP has relatively limited influence on financial development in Hubei province. In addition, it needs to be noticed that the decrease of deposit really foreshows the coming of the period of economic transition, but on the other hand, the increasing ratio of credit loan to GDP indicates the continuation of extensive economy. Therefore, what we need to do in solving the problem of Hubei economic development is One Transition and One Transformation, that is, one transition from supply oriented to demand-oriented and one transformation from extensive economy to intensive economy. References [1]Rohinson Joan(1952), “The Generalization of the General Theory”, in: The Rate of Interest and Other Essays, Macmillan, London:67-142 [2]R.Lucus(1988), “On the mechanics of economic development”, Journal of Monetary Economics 22(Jan.):3-42. 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