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China’s Economic Growth Model (1982-2005) Daniela Slegrova, Kabyenad Tesfaye Department of Economics, California State University East Bay Economics 6896, Research Methods Spring 2007 Abstract The world noted China’s incredible growth to becoming one of the top economic producers of the world in a relatively short amount of time. What is to explain this rapid economic expansion? China’s GDP is 50 times bigger in 2005 (18,308.5 billion Yuan) than in 1978 (365 billion Yuan). We approached this full-sized task in a multifaceted manner as a pure research, consulted many scholars (peer and established), read many scholarly journals and books, and aptly kept our ears open to the opinions of those who had something to say about this subject matter. Time series analysis of annual data between 1982 and 2005 was used to explain the trend of gross domestic product (GDP) growth. The significant variables proved to be policy change after 1978 reflected in economic freedom index—especially in the area of freedom to trade internationally and foreign direct investment in fixed assets with further impact on employment of secondary industry and township-village enterprises. Surprisingly, savings of China’s households defined as a sum of time and demand deposits do not have positive effect on the GDP growth. Keywords: Economic Freedom Index; Economic Growth; National Bureau of Statistics of China JEL classification: F15; F21; F43; F59 1. Introduction The Chinese economy recently surpassed many OECD countries such as Japan, United Kingdom, South Korea, and France to become the second largest in the world after the United States. (http://www.theodora.com/wfb2003/rankings/gdp_2003_0.html) We note from the graph below that the Chinese economy began to take off near 1978, when China began to put into practice a more liberalized and market oriented policies via its government’s willingness to incrementally privatize its state owned enterprises. Figure 1 China's GDP (100 million yuan) (1952-2005) 03 20 97 00 20 19 91 94 19 19 88 19 82 85 19 19 76 79 19 19 73 19 70 19 67 19 61 64 19 19 55 58 19 19 19 52 160,000 140,000 120,000 100,000 80,000 60,000 40,000 20,000 - According to one estimate, China only needs a growth rate of 5.5% until 2015 to surpass the United States. (http://www1.oecd.org/publications/observer/215/e-foy.htm) Table 1 show that China’s Gross Domestic Product (GDP hereafter) has been growing at an average rate of 10% for the past quarter of a century. In view of that, using the rule of 72 we can expect the economy to double in size approximately every seven years. The rule of 72 is not violated in China’s case because GDP numbers in 2004 (13,688 billion Yuan) are 28 times what they were in 1981 (486 billion Yuan) which to some extent indicates a doubling of GDP figures every six or seven years. More precisely, GDP figures roughly tripled every six or seven years for most of the 90’s and more like doubled in the other years. At one end of the extreme, GDP figures in 1996 (6,789) were 3.65 times bigger than what they were in 1990 (1,855); whereas in 2002 GDP figures (10,517) were 1.55 times bigger than they were in 1996 (6,789). The impreciseness here most likely stems from the change in population as well as from rapid change in policy during these times where China became a lot more involved in the international markets. Furthermore, the data from the bureau of statistics may suffer from uncertain accuracy. Hitherto on the average, the Chinese economy was 2.18 bigger 5 years prior, 2.56 bigger 6 years prior, and 3.02 times bigger seven years prior for the years 1981 to 2004. Table 1 Year 1981 1982 1983 1984 1985 1986 1987 1988 1989 1990 1991 1992 5.2 9.1 10.9 15.2 13.5 8.8 11.6 11.3 4.1 3.8 9.2 14.2 1993 1994 1995 1996 1997 1998 1999 2000 2001 2002 2003 2004 14.0 13.1 10.9 10.0 9.3 7.8 7.6 8.4 8.3 9.1 10.0 10.1 %change GDP (n/n-1)-1 Year %change GDP (n/n-1)-1 We should note here that we plan to look at what led to this apparent success. Alternatively, many others attribute the opening up of China to be the main determinant followed by foreign direct investment and household consumption. These are all important aspects of economic growth that are intertwined. 2. Framework The key question that we are trying to answer is: what are the key driving forces of China’s economic growth—particularly after 1981. Leading Chinese Theorist George Zhibin Gu was asked in a recent interview what in his mind were the key driving forces behind China’s economic development today. His opinion was that 1) opening up of the economy, 2) domestic consumption explosion, and 3) international involvement in three areas—foreign direct investment, increase in manufacturing, and international trade were the three most important explainers of China’s growth. He is not alone in this opinion. Lawrence Summers also notes that ‘the most important determinant of every country’s fortunes is the policy choices of its people and its government’. (http://santiago.indymedia.org/news/2007/05/67313.php) Furthermore, in May 2006 we asked Professor Gregory Christainsen, who currently lectures at California State University East Bay, what in his opinion were the key determinants of a country’s growth, he stated that opening up was the most important aspect of economic development of a country, and ranked culture and rule of law to be next most important variables. Although there may be a little disagreement on what are the second and third most important variables, we should note that all of the variables mentioned above are critical to economic development and that all three economists rank policy as the number one variable of economic development. Of course past empirical studies have alluded to the fact that China saves a lot and credit this high savings rate to many favorable effects it has on the economy. In fact, average time deposit’s as a share of GDP is near 37% for the last 25 years and even more amazingly at approximately 50% in the last decade. In comparison, similar to Japan, China certainly saves a lot more than the United States, where many households spend more than they save. In fact, household savings rate for US in January 2006 was -0.7% and in recent times close to 7% in Japan—far below what it was in the mid-1970s at 20%. To add a few notes, Japan is certainly saving less than it used to in the past. Nonetheless, the problem lies in China’s financial intermediation process which has proven to be much less efficient than the latter two. We should note here that there is no ‘purely private’ Chinese bank but rather state-owned ones with much inefficiency. According to the Solow growth model, savings rates play a crucial role in explaining growth and China’s case seems to support this theory. The theory notes that savings accelerate the economy to a higher level of production and later drop back to the original rate of growth in the long run. In a sense, savings give a big boost to higher production levels. China is an appealing country to look at because it is incrementally moving away from government or centrally planned operations to market driven operations; and such a shift in economic systems will allow us to see the effects of the shift on the variables that we are interested in observing. For example, we see clear shift in the data for foreign direct investment and consumption along the same time period. Although it is not one of the ‘freest’ economies in the world, China’s drive to get herself in to the World Trade Organization has proven to be detrimental to her economy. Many countries around the world have trepidations that they will not be able to compete with China because they claim China has lots of labor with lower wages that allows it to produce more. They further claim that China need to export less and consume more. In addition to these aspects, we prepare to explore the degree of openness China has in terms of trade and in comparison to other similar type of economies such as Japan, Germany and USA. Certainly China wants to play a role in the global economy, but what kind of role it will play seems to be still up in the air. Recently China was rated 95th. in economic freedom in the index published in Economic Freedom of the World by the Fraser Institute. This postulates that there is still room for improvement. We found throughout our research that the Economic Freedom of the World index composed by the Fraser Institute gives a good measure of policy because the institution that provides the information seem to be highly reputable and was constructed under the leadership of the late Nobel Laureate, Milton Friedman. Furthermore, this particular freedom index is believed to be the most objective and accurate measure of economic freedom published to date by any organization.. Policy is not an easy variable to quantify. Nonetheless, the economic freedom index looks at five crucial categories of a country’s activities and gives a rank of those categories, which are: 1) size of government: expenditures, taxes, and enterprises, 2) legal structure and security of property rights, 3) access to sound money, 4) freedom to trade internationally, and 5) regulation of credit, labor, and business. These categories have many subcategories which are averaged out to give a final summary index of a country. The graph below illustrates how china compares to India, which has similar population to China, and USA, the world’s most productive country. Figure 2 Summary index of IEF 9.0 8.0 7.0 6.0 China 5.0 India 4.0 USA 3.0 2.0 1.0 0.0 1980 1985 1990 1995 2000 2001 2002 2003 2004 From the graph, we note that according to the freedom index, China has improved her conduciveness to economic activities from near five to six. Clearly, the increase in the ranking coincides with GDP growth in the early 90s, where China recorded GDP growth rates in the middle teens. Moreover, we noted many variables such as consumption and investment, which are components of GDP, proceed with GDP figures as expected, which we will further discuss in detail later. From the graph below we note that China has certainly improved in most aspects of economic freedom as measured by the index, which is a real credit to her management of her country’s economy. The graph below also illustrates China’s improvements in certain areas, especially in monetary policy. There was a sharp increase in the sound money ratings of near six in 1995 to eight in 2000. The biggest threat to China’s current growth is inflation and the monetary authorities have done a good job in containing it to a manageable level. However, if this will be the case in the near future is open to discussion. China’s wages have been increasing steadily in the past, and recently the Wall Street Journal reported that wages on the average increased by 21% in 2006. The graph also indicates that the legal system and property rights need improvement. In exception to that category, all other indices have shown a general upward trend. Figure 3 Economic Freedom Index 9.0 1 Size of Government 8.0 7.0 2 Legal System & Property Rights 6.0 3 Sound Money 5.0 4 Freedom to Trade Internationally 4.0 3.0 5 Regulation 2.0 SUMMARY INDEX 1.0 0.0 1970 1975 1980 1985 1990 1995 2000 2001 2002 2003 2004 3. Methods Our research tries to explain the major reasons of gross domestic product (GDP) growth in post-communist countries, specifically in China. Time series analysis of annual data between 1982 and 2005 was used to explain the trend of gross domestic product growth. The significant variables proved to be policy change after 1978 reflected in economic freedom index, especially in the area of freedom to trade internationally, and foreign direct investment in fixed assets with further impact on employment of secondary industry and township-village enterprises. Surprisingly, savings of China’s households defined as a sum of time and demand deposits do not have positive effect on GDP growth. This issue may be caused by the inaccuracy of the official data, multicollinearity among more than two variables that is not shown in the correlation matrix or just by the fact that China’s household savings do not positively contribute to GDP growth. This single case study explains the major reasons that influenced trend of China’s GDP between 1982 and 2005 using quantitative variables, multivariate linear regression models and ordinary least squares method in the statistical program GRETL. Our quantitative variables are related as follows. The policy changes from communist to capitalist regime started in 1978. Considering time lag of this policy effect and availability of official data, analysis from 1982 to 2005 seems appropriate. First variables possibly influenced by the political change are economic freedom index and foreign direct investment in fixed assets. Further impact could be seen in employment of secondary industry and township-village enterprises. Logically, higher investment and employment leads to increase in production, GDP. Labor as a factor of production is being paid in form of wages/ salaries. After income tax deduction, worker is left with disposable income that can be either consumed or saved. Household consumption is part of GDP calculated by expenditure approach. Household savings, as defined by National Bureau of Statistics of China, is the sum of time and demand deposits that banks use as a source of funds for businesses loans and that is supposed to contribute positively to higher investment and production, GDP. This research presents five different models with possible explanations of the China’s GDP growth rate in percent between 1982 and 2005. The first three models consider percentage changes in savings, foreign direct investment, and freedom to trade internationally, employment in secondary industry and township village enterprises. The lagged GDP is used to deal with the autocorrelation issue. The forth and fifth model represent further explanation of the GDP growth rate in percent. These two models consider household consumption, domestic loans as source of funds for fixed assets and lagged GDP. Since household consumption is highly correlated, 0.7, with lagged GDP and foreign direct investment we were not able to use all of them in one model. More details are demonstrated in Results, part 5. The results of our regression models support the statement of leading Chinese theorist George Zhibin Gu, who mentioned the key driving forces behind China’s economic growth as 1) opening up of the economy, which we measured as economic freedom index, respectively freedom to trade internationally, 2) domestic consumption explosion, measured in our case as household consumption and 3) international involvement in three areas—A) foreign direct investment, measured as foreign direct investment in fixed assets, B) increase in manufacturing, reflected as employment of secondary industry, C) and international trade, shown in freedom index to trade internationally. 4. Data and Sample All the data with exception of economic freedom index were drawn from the Statistical Yearbook 2006, an official publication by National Bureau of Statistics (NBS) of China. It is important to acknowledge uncertain accuracy of this data that were mostly gathered as sample surveys with traditional bottom-up reporting system. In other words, the data estimates were transferred from the level of village heads to townships, county statistical offices, and provincial offices and finally aggregated by the National Bureau of Statistics. The statistical impreciseness is always present and revisions happen either during the economic census year or when more data is available. As a consequence, our statistical models may not be accurate or regression coefficients may show a wrong sign as in case of savings. Other possible explanation for negative coefficient of savings may be multicollinearity among more than two variables that is not shown in the correlation matrix. Fred Gale compiles the NBS of China’s data for the purposes of Economic Research Service of the United States department of agriculture. His opinion about China’s official statistics in not optimistic. “The politicization of statistics, reliance on bottom-up administrative reporting, use of nonstandard definitions, and parallel reporting systems in multiple agencies often make Chinese statistics confusing and potentially misleading. Many analysts believe that macroeconomic statistics overstate economic growth and understate unemployment.”(China’s Statistics: Are They Reliable?) Unfortunately, the official statistics was the only source providing us with necessary data. Despite of these facts, National Bureau of Statistics has recently started modernization of the old system of data collection and reporting that may bring positive results in the future. Our single case study explains the major reasons that influenced trend of China’s GDP from 1982 to 2005 using quantitative variables and multivariate linear regression functions in statistical program GRETL. This research presents models with 24 annual data, expressed in form of percentage annual changes. For example, foreign direct investment in 1982 is percentage annual change between 1982 value in 100 million yuans, which is 60.5, and 1981 value in 100 million yuans, which is 36.4, indicating positive 66.4 percent change. Another issue was incompleteness of the data in case of savings, township-village enterprises employment, average real wage and annual per capita income of urban household. We used linear extrapolation to obtain missing data necessary for our research. From the line equation y = a x + b between two known values, we calculated intercept (a) and slope (b). Since we knew years, variable x, it was easy to calculate missing variable y, which is savings, township-village enterprises employment etc. Despite of these limitations, the multivariate regression models provide us with good explanation of the GDP growth trend from 1982 to 2005. We are aware of the fact that increasing the sample size may be helpful for future research to improve significance of the independent variables. As already mentioned, our sample includes 24 annual observations expressed as annual percentage changes to keep consistency with economic theory. Our dependent variable is the growth rate of gross domestic product in percent. Independent variables reflecting the impact of government policy change after 1978, also expressed as annual percentage changes, are economic freedom of the world index (by Fraser Institute), foreign direct investment in fixed assets, employment of secondary industry and township-village enterprises. Other variables that are being considered are domestic loans as another source of investment in fixed assets, average real wage, household savings and consumption. National Bureau of Statistics of China defines the gross domestic product (GDP) as the final products at market prices produced by all resident units in a country (or a region) during a certain period of time. (China’s Statistical Yearbook 2006, Chapter 3) For the purposes of our research, we converted all the variables to annual percentage changes. “Foreign investment refers to foreign funds received during the reference period for the construction and purchase of investment in fixed assets (covering equipment, materials and technology), including foreign borrowings (loans from foreign governments and international financial institutions, export credit, commercial loans from foreign banks, issue of bonds and stocks overseas), foreign direct investment and other foreign investment. Excluded in this category are capitals in foreign exchanges owned by China (foreign exchanges owned by the central and local governments, foreign exchanges retained by enterprises, foreign exchanges by enterprises through regulating mechanism, loans in foreign exchanges issued by the Bank of China with its own fund, etc.).” (China’s Statistical Yearbook 2006, Chapter 6) Consistently with the rest of our variables, the foreign investment is also expressed in the form of percentage annual change. “Economic freedom of the world index, published by Fraser Institute, measures the degree to which the policies and institutions of countries are supportive of economic freedom. The cornerstones of economic freedom are personal choice, voluntary exchange, freedom to compete, and security of privately owned property. Thirty-eight data points are used to construct a summary index and to measure the degree of economic freedom in five areas: (1) size of government; (2) legal structure and security of property rights; (3) access to sound money; (4) freedom to trade internationally; and (5) regulation of credit, labour and business. The summary index is ranked between 0 and 10, meaning 0 % or 100 % economic freedom. ” (Fraser Institute Website) Like the rest of our variables, the economic freedom index is also expressed in the form of percentage annual change. The historical availability of the data was the main reason why we chose this Fraser Institute freedom index to be included in our model. National Bureau of Statistics does not present definition of savings. The only information provided in Statistical Yearbook 2006 is that savings deposit in urban and rural Areas are sum of time and demand deposits. (China’s Statistical Yearbook 2006, Chapter 10) Savings are expressed as annual percentage changes. “Households consumption expenditure refers to the total expenditure of resident households on the final consumption of goods and services. In addition to the consumption of goods and services bought by the households directly with money, the households consumption expenditure also includes expenditure on goods and services obtained by the households in other ways, i.e. the so-called imputed consumption expenditure, which includes the following: (a) the goods and services provided to the households by the employer in the form of payment in kind and transfer in kind; (b) goods and services produced and consumed by the households themselves, in which the services refer only to the owner-occupied housing and domestic and individual services provided by the paid household workers; (c) financial intermediate services provided by financial institutions; (d) insurance services provided by insurance companies.” (China’s Statistical Yearbook 2006, Chapter 3) Consumption is expressed as annual percentage change. Township village enterprises employment in rural area is expressed as annual percentage change in number of employed persons and is not defined in Statistical Yearbook 2006. Secondary industry employment refers to annual change in number of employed persons in secondary industry, which refers to mining and quarrying, manufacturing, production and supply of electricity, water and gas, and construction. (China’s Statistical Yearbook 2006) “Average real wage of staff and workers refers to the average wage of staff and workers after removing the effects of the price changes. Average real wage indices of staff and workers refers to the change of real wage, which reflects the relative increasing or decreasing level of real wage of staff and workers, which is calculated as follows: Average Real Wage Indices = Average Wage Indices of Staff and Workers at the Reference Time / Urban Consumer Price Indices at Reference Time x 100%” (China’s Statistical Yearbook 2006, Chapter 5) Similarly to the rest of the variables average real wage is also converted into annual percentage changes. “Domestic loans refer to loans of various forms borrowed by investing units from banks and non-bank financial institutions during the reference period for the purpose of investment in fixed assets, including loans issued by banks from their self-owned funds and deposit, loans appropriated by higher responsible authorities, special loans by government (including loan for substituting petroleum with coal, special loan for reformthrough-labour coal mines), loans arranged by local government from special funds, domestic reserve loan, and working loan, etc.” (China’s Statistical Yearbook 2006, Chapter 6) Similarly to the rest of the variables domestic loans are converted into annual percentage changes. Our quantitative variables are related as follows. The policy changes from communist to capitalist regime started in 1978. Considering time lag of this policy effect and availability of official data, analysis from 1982 to 2005 seems appropriate. First variables possibly influenced by the political change are economic freedom index and foreign direct investment in fixed assets. Further impact could be seen in employment of secondary industry and township-village enterprises. Logically, higher investment and employment leads to increase in production, GDP. Labor as a factor of production is being paid in form of wages/ salaries. After income tax deduction, worker is left with disposable income that can be either consumed or saved. Household consumption is part of GDP calculated by expenditure approach. Household savings, as defined by National Bureau of Statistics of China, is the sum of time and demand deposits that banks use as a source of funds for businesses loans and that is supposed to contribute positively to higher investment and production, GDP. Domestic loans can be seen as another source of funds for investment in fixed assets. Figure 4 - Annual Percentage Changes of China’s GDP, Savings, Foreign Direct Investment (1982-2005) Annual Percentage Changes of China's GDP, Savings, Foreign Direct Investment (1982-2005) 120 100 80 GDP % S% FDI % 60 40 20 0 -20 1982 1984 1986 1988 1990 1992 1994 1996 1998 2000 2002 2004 -40 Source: http://www.stats.gov.cn/tjsj/ndsj/2006/indexeh.htm Figure 5 - Annual Percentage Changes of China’s GDP, Employment in Secondary Industry and Township-village Enterprises (1982-2005) Annual Percentage Changes of China's GDP, Employment in Secondary Industry and Township-village Enterprises (1982-2005) 25 GDP % 20 TVE % 15 ESI % 10 5 0 -5 1982 1984 1986 1988 1990 1992 1994 1996 1998 2000 2002 2004 -10 Source: http://www.stats.gov.cn/tjsj/ndsj/2006/indexeh.htm Figure 6 - Annual Percentage Changes of China’s GDP, Savings, Foreign Direct Investment (1982-2005) Annual Percentage Changes in China's GDP, Consumption, Domestic Loans (1982-2005) 120 100 80 60 40 GDP % C% 20 DL % 0 -20 1982 1985 1988 1991 1994 1997 2000 -40 Source: http://www.stats.gov.cn/tjsj/ndsj/2006/indexeh.htm 2003 5. Results Our research tries to explain the major reasons that influenced trend of China’s GDP from 1982 to 2005 using quantitative variables, multivariate linear regression functions and ordinary least squares method in statistical program GRETL. Of course, we checked for possible issues with our time series analysis. The correlation matrix helped us with multicollinearity between two variables. DurbinWatson statistics measured the first order autocorrelation of our dependent variable, which is annual percentage change in GDP. Further tests for normality and heteroscedasticity were performed. As mentioned in Methods, part 3, we used five different models with possible explanation of the China’s GDP growth rate in percent between 1982 and 2005. The first three models consider percentage changes in savings, foreign direct investment, freedom to trade internationally, employment in secondary industry and township village enterprises. The lagged GDP is used to deal with the autocorrelation issue. The forth and fifth models represent alternative explanation of the GDP growth rate in percent. They consider household consumption, domestic loans as source of funds for fixed assets and lagged GDP. Since household consumption is highly correlated, 0.7, with lagged GDP and foreign direct investment we were not able to use all of them in one model. Table 2 - Ordinary Least Squares estimates using the 24 observations 1982-2005, GRETL Dependent Variable: GDP growth rate %. Independent variables in terms of annual % change included below. -0.137 p-value <0.00001 *** 0.01243 ** 0.074 Model 1 10.332 Constant Savings % Foreign Direct Investment % Freedom to Trade Internationally % Secondary Industry Empl. % Township Village Enterprises Empl. % p-value Model 2 10.003 <0.00001*** -0.099 0.04089 ** 0.00028 *** 0.060 0.00367 *** 0.124 0.01679 ** 0.094 0.06907 * 0.219 0.07983 * 0.105 0.173 Adjusted R2 0.474 F-statistic 6.189 0.002 5.495 0.004 Normality test OK 0.234 NOT OK 0.075 Heteroscedasticity test OK 0.192 OK 0.341 Durbin-Watson Akaike information criterion Schwarz Bayesian criterion 0.439 INCONCLUSIVE INCONCLUSIVE 106.704 112.594 108.276 114.166 The explanatory variables in first two models differ only in the choice of employment. As can be seen from above, the annual percentage change in secondary industry employment has significant p-value and model 1 passes the test of normality as compared to model 2, which does not pass the normality test and annual percentage change in township-village employment, is not significant at the 10 % level. Table 3 - Ordinary Least Squares estimates using the 24 observations 1982-2005, GRETL Dependent Variable: GDP growth rate %. Independent variables in terms of annual % change included below. Constant p-value Model 1 10.332 <0.00001 *** -0.137 Savings % 0.074 Foreign Direct Investment % Freedom to Trade Internationally % 0.124 0.219 Secondary Industry Empl. % 0.01243 ** 0.00028 *** 0.01679 ** 0.07983 * p-value Model 3 6.745 0.00028*** -0.152 0.0061*** 0.055 0.00398 *** 0.213 0.07676 * 0.488 0.00851 *** GDP t-1 % Adjusted R2 F-statistic Normality test Heteroscedasticity test Durbin-Watson Akaike information criterion (AIC) Schwarz Bayesian criterion (SBC) 0.474 6.189 OK OK INCONCLUSIVE 106.704 112.594 Figure 7 – Normality test of residual for model 3 0.002 0.234 0.192 0.507 6.924 OK OK 105.143 111.033 0.001 0.509 0.226 0.25 uhat3 N(-5.181e-016,1.9739) Test statistic for normality: Chi-squared(2) = 1.350 pvalue = 0.50903 0.2 Density 0.15 0.1 0.05 0 -6 -4 -2 0 2 4 6 uhat3 Since the Durbin-Watson check for autocorrelation is inconclusive in model 1, we implemented lagged GDP growth rate, which proved to be strongly significant at 10 % level. The p-values of normality and heteroscedasticity tests are higher than 0.1 indicating that residuals of model 3 are normally distributed and that variance is constant at 10 % level. The last column gives the p-value for a two-tailed test for the null hypothesis that the corresponding regression coefficient is zero. High p-value means that the probability of a type I error in rejecting the null is high. Coefficients for all explanatory variables in model 3 are significantly different from zero at 10 % level. The overall F-test is also significant at 10 % level. The selected statistics Akaike Information Criterion (AIC), Schwarz Bayesian criterion (SBC) are lower and therefore better in model 3 compared to model 1. We would therefore present model 3 as our “best” model with following explanation. The adjusted R2 is 0.507, indicating that 50.7 % of the variance in annual percentage change in GDP is explained collectively by the variables in model 3. Explanation of coefficients in Model 3: If household savings increase by 1 %, holding other variables constant, the growth rate of GDP decreases by 0.152 %. If foreign direct investment in fixed assets increases by 1 %, holding other variables constant, the growth rate of GDP increases by 0.055 %. If secondary industry employment increases by 1 %, holding other variables constant, the growth rate of GDP increases by 0.213 %. If GDP lag increases 1 %, holding other variables constant, the growth rate of GDP increases by 0.488 %. Other possible explanations were also taken in account. We chose different variables than in previous models; their complete list is mentioned in the correlation matrix. However, only annual percentage change in household consumption and annual percentage change in domestic loans as investment source for fixed assets proved to be significant at 10 % level. Since the Durbin-Watson autocorrelation test for model 4 proved to be inconclusive, we added lagged GDP as explanatory variable in model 5. Because the annual percentage change in household consumption is highly correlated, 0.7, with lagged GDP, we did not include them in the same model. Table 4 - Ordinary Least Squares estimates using the 24 observations 1982-2005, GRETL Dependent Variable: GDP growth rate %. Independent variables in terms of annual % change included below. Model 4 6.157 Constant 0.171 Consumption % Domestic Loans for Fixed Assets % 0.052 p-value <0.00001 *** 0.0024 *** Model 5 4.301 p-value 0.00539 *** 0.00411 *** 0.064 0.00073 *** 0.00502 *** 0.422 GDP t-1 % Adjusted R2 F-statistic Normality test Heteroscedasticity test Durbin-Watson Akaike information criterion Schwarz Bayesian criterion 0.569 16.206 OK OK 0.0001 0.137 0.840 0.540 14.515 OK OK 0.0001 0.402 0.120 INCONCLUSIVE 100.320 103.854 101.889 105.423 Similar to model 3, model 5 also passes the overall F-test, normality and heteroscedasticity tests. The coefficients of all explanatory variables in model 5 are significantly different from zero at 10 % level. The adjusted R2 is 0.54, indicating that 54 % of the variance in annual percentage change in GDP is explained collectively by the variables in model 5. Explanation of coefficients in model 5: If domestic loans as a source of investment in fixed assets increase by 1 %, holding other variables constant, the growth rate of GDP increases by 0.064%. If GDP lag increases 1 %, holding other variables constant, the growth rate of GDP increases by 0.422 %. Table 5 - Correlation matrix - Correlation coefficients, using the observations 1982 – 2005, 5% critical value (two-tailed) = 0.4044 for n = 24 GDP__ 1.0000 S__ 0.0673 0.4671 0.5199 0.5639 -0.5185 1.0000 GDP_t_1__ 0.5183 1.0000 S_t_1__ -0.0245 -0.0812 0.2576 0.2032 -0.6207 0.6009 1.0000 C__ 0.6424 0.6764 1.0000 PCI_AUH__ 0.3942 0.5046 0.7342 1.0000 ARW__ -0.0383 -0.2814 -0.3998 -0.1895 1.0000 GDP__ GDP_t_1__ C__ PCI_AUH__ ARW__ FDI__ 0.5464 0.4735 0.6815 0.7883 -0.1963 0.5320 0.2664 1.0000 TVE__ 0.4580 0.1729 0.2835 0.0935 -0.2931 0.3371 0.3578 0.4429 1.0000 ESI__ 0.1343 0.0520 0.1237 0.0034 -0.1120 0.4602 0.3518 0.1411 0.2662 1.0000 GDP__ GDP_t_1__ C__ PCI_AUH__ ARW__ S__ S_t_1__ FDI__ TVE__ ESI__ index__ 0.2660 0.3952 0.3136 -0.1341 -0.0244 0.0632 -0.1430 -0.0540 0.1807 0.0046 1.0000 fti__ 0.2915 0.4657 0.4377 0.0259 -0.0639 0.1521 -0.0350 -0.0013 0.1755 -0.0986 0.8778 1.0000 DL__ 0.6197 0.1273 0.3133 0.0993 0.0821 0.0760 -0.0361 0.3826 0.3843 0.3274 0.4883 0.2950 1.0000 GDP__ GDP_t_1__ C__ PCI_AUH__ ARW__ S__ S_t_1__ FDI__ TVE__ ESI__ index__ fti__ DL__ Explanation of variables in correlation matrix: GDP__ - GDP % - annual percentage change in GDP GDP_t_1__ - GDP t-1 – annual % change in GDP lagged 1 period C__ - C % - annual % change in households consumption PCI_AUH__ - annual % change in per capita income of urban household ARW__ - ARW % - annual % change in average real wage S__- S % - annual % change in households savings S_t_1__ - S t-1 – annual % change in household savings lagged 1 period FDI__ - FDI % - annual % change in foreign direct investment in fixed assets TVE__ - TVE % - annual % change in the township-village employment ESI__ - ESI % - annual % change in secondary industry employment index__ - INDEX % - annual % change in the summary index of economic freedom fti__ - FTI % - annual % change in freedom to trade internationally, one area of summary index DL__ - DL % - annual % change in domestic loans as investment in fixed assets Correlation coefficient values are between 0 and 1. In the regression models we try to find combination of independent variables that are not correlated with each other and are at the same time highly correlated with dependent variable, which is annual % change in GDP. Contrary to the economic theory, average real wage % is negatively correlated with GDP. That may point to the issue of data inaccuracy. Per capita income of urban household as annual % change is highly correlated with foreign direct investment and therefore we cannot use both variables in the same regression model. Savings are positively related with GDP % and have low correlation coefficients with the independent variables, which is good. The possible reasons for negative sign of savings in regression models are correlation between more than 2 variables that is not shown in correlation matrix, data inaccuracy or just fact that China’s household savings have negative impact on the GDP growth. 6. Summary Our research tried to explain the major reasons of gross domestic product (GDP) growth in post-communist countries, specifically in China. Time series analysis of annual data between 1982 and 2005 was used to explain the trend of gross domestic product growth. The significant variables at 10 % level using ordinary least squared method in GRETL proved to be policy change after 1978 reflected in economic freedom index, especially in the area of freedom to trade internationally, and foreign direct investment in fixed assets with further impact on employment of secondary industry, township-village enterprises and household consumption. Surprisingly, savings of China’s households defined as a sum of time and demand deposits do not have positive effect on GDP growth. This issue may be caused by the inaccuracy of the official data, multicollinearity among more than two variables that is not shown in the correlation matrix or just by the fact that China’s household savings do not positively contribute to GDP growth. The results of our regression models support the statement of leading Chinese theorist George Zhibin Gu, who mentioned the key driving forces behind China’s economic growth as 1) opening up of the economy, which we measured as economic freedom index, respectively freedom to trade internationally, 2) domestic consumption explosion, measured in our case as household consumption and 3) international involvement in three areas—A) foreign direct investment, measured as foreign direct investment in fixed assets, B) increase in manufacturing, reflected as employment of secondary industry, C) and international trade, shown in freedom index to trade internationally. 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