Export Trade, Absorptive Capacity, and High-Quality Economic Development in China
Abstract
:1. Introduction
1.1. Background
1.2. Study Motivation
1.3. Article Structure Arrangement
2. Literature Review
2.1. Relevant Research on High-Quality Economic Development and Its Measurement
2.2. Relevant Research on Trade and Economic Development
- (1)
- The impact of trade on the economic efficiency. In the endogenous economic growth theory, which emerged in the 1980s, endogenous technological progress is the decisive factor for sustainable economic growth. Based on this theory, the new trade theory further concludes that trade has an impact on economic growth and productivity through the expansion of the economies of scale and technological spillovers. The growth of exports can introduce technology innovation rewards to traders, and the end of the technology monopoly period will gradually narrow the technology gap between countries and stimulate a new demand for technology research and development in the countries with first-mover-innovation advantages [15]. Moreover, technology spillovers that are generated by trade exports through external economic effects and differential factor productivity effects can improve the productivity levels of the nonexport sectors [16], and the learning effect produced by trade via “learning by doing” can further enhance a country’s total factor productivity [17]. In China, there has been an R&D spillover effect since the opening-up of trade [18]. A large number of studies have emerged in the academic circle in which the researchers conduct in-depth discussions on the relationship between trade and technological progress, and they have concluded that the trade openness has remarkably improved the total factor productivity [19], and that exports encourage enterprises to participate in R&D. Comparatively speaking, enterprises that export and research and develop at the same time are more productive; however, the incentive effect of exports on innovation only occurs within foreign trade enterprises that have higher productivities [20]. On the contrary, some scholars believe that regions that are engaged in export processing have an inhibitory effect on the growth rate of the total factors in the region [21];
- (2)
- The impact of trade on the green efficiency. Foreign trade has a positive effect on energy efficiency, and primarily through the technology spillovers from imports and the learning from exports [22]. The service export trade of developing countries is conducive to the promotion of China’s green total factor productivity [23]. Moreover, the improvements in the trade export scale and export quality have substantially and positively promoted the green efficiency of regional industries [24]. Contrary to the above research conclusions, some scholars believe that the low-level expansion of export trade hinders the green transformation of China’s industry, thereby reducing the industrial energy efficiency [25]. The total trade volume at the industry level has not substantially affected China’s energy efficiency. However, the import of intermediate goods remarkably improves the energy efficiency, while the export of intermediate goods is not conducive to an improvement [26]. After crossing the threshold of human capital, trade liberalization has tremendously promoted green productivity; however, the impact is only partially relevant [27];
- (3)
- The impact of trade on the economic structure. The foreign trade structure has a vital impact on the upgrading of the national industrial structure [28]. In accordance with the theory of factor endowment and comparative advantage, a country will make full use of its factor resources with endowment advantages to participate in the international division of labor, which promotes industrial development. Based on the comparative advantage theory, developing countries can achieve industrial upgrading by following the development path of “assembly—manufacturing—R&D” [29]. At the same time, trade can accelerate the advanced development of the industrial structure through the accumulation of material capital and the stimulation of the consumption demand [30]. Some scholars also argue that foreign trade and the industrial structure have upgraded to a nonlinear U-shaped relationship. With the expansion of trade, the level of the industrial structure first declined and then increased [31]. Moreover, nothing but the optimization of the trade structure in goods can promote the upgrading of the industrial structure, while the role of trade in services is not substantial [32].
2.3. Objectives and Contributions
3. High-Quality Economic Development System
3.1. System Construction
3.2. Measurement Method
3.2.1. Standardization of Treatment
3.2.2. Calculation of Comprehensive Indicators
3.3. Analysis of System Results
4. Theoretical Mechanism, Hypotheses, and Research Design
4.1. Theoretical Mechanism and Hypotheses
4.1.1. Direct Impact of Export Trade on High-Quality Economic Development
4.1.2. Indirect Action Mechanism of Export Trade on High-Quality Economic Development
- (1)
- The export trade impact on the economic subsystem. Because the economic subsystem involves multiple indicator dimensions, such as economic growth, innovation efficiency, and financial development, at the level of economic growth, exports cause the rapid expansion of the domestic market scale and the doubling of the income levels. Under the effect of economies of scale, the marginal cost of enterprise production tends to decrease, and the profit returns tend to increase. The increase in profits provides the financial support for enterprises to carry out technological innovation. From the angle of innovation efficiency, Melitz points out that trade allows more productive firms to enter international markets, while those that are less productive maintain their home markets [40]. As a result, export enterprises usually face competitors with high technology level in the international market [41]. The learning effect of export enterprises through learning by doing can significantly promote the innovation of local enterprises [42], the technology spillover effect is more significant after the absorption capacity is added [43]. Serti and Tomasi also point out that whether exports can bring productivity gains depends on the absorptive capacity of exporting firms [44]. In addition, facing fierce international competition in the international market, trade enterprises will actively seek to innovate and upgrade their production technology [45], and the trade competition will also result in the withdrawal of enterprises with low productivities. Export earnings are concentrated among the enterprises with high productivities, which will improve the productivity of the entire industry in the long term;
- (2)
- The export trade impact on the social subsystem. The social subsystem covers different dimensions, such as social progress, social equity, and social security. Here, social progress refers to the livelihood level of the people rather than to economic development and productivity, and export trade is more likely to have an impact on the latter. Moreover, social security and social equity are dominated by government departments, while social security is only a part of the social responsibility that enterprises should bear; thus, export trade may not have a substantial impact on the social subsystem;
- (3)
- The export trade impact on the ecological subsystem. The ecological subsystem covers not only the undesired environmental pollution, energy consumption, and other indicators, but also the environmental protection level, which has a positive impact on the ecological environment. Most researchers have confirmed that the opening-up of export trade will aggravate and intensify the environmental pollution in China. Some energy- and resource-based trading enterprises increase their exports at the cost of higher energy consumption, which is also detrimental to the improvement in China’s environmental quality. However, some scholars have concluded that export trade can promote the progress of the green innovation efficiency [46], thereby improving the environmental protection levels of enterprises. Therefore, under the dual effects of negative pollution intensification and positive environmental protection enhancement, export trade may not have a substantial impact on the ecological subsystem;
- (4)
- The export trade impact on the open subsystem. Export trade is an important part of China’s opening-up, and the adherence to the opening-up is an important premise for China’s economy in its achievement of 40 years of high-speed growth. A higher level of openness in the new era was the original intention of the high-quality economic development. The opening up of China promotes reform, development, and innovation, which, in turn, promotes high-quality economic development. Second, on the level of investment openness, some studies have pointed out that export trade mainly affects the investment behavior of transnational corporations through the exchange rate, which is because exports are the main source of national foreign exchange reserves, which, in turn, have a direct impact on the national exchange rate [47]. Therefore, exports indirectly affect the exchange rate level through the surplus or gap in foreign exchange reserves. The exchange rate is an important factor that affects transnational investment because the fluctuation in the exchange rate may increase the expected income and profit levels of transnational investors, and export trade may improve China’s foreign investment level through the exchange rate transmission mechanism [48]. Third, export trade can also promote the development of cross-border tourism through the “publicity effect” of export commodities [49]. The expansion of inbound tourism will not only bring economic income to China, but will also contribute to transnational cultural exchange and cooperation;
- (5)
- The export trade impact on the coordinate subsystem. Because the coordination subsystem involves income coordination [50], consumption coordination, and production coordination, export trade mainly influences the coordination subsystem through these channels by improving the labor remuneration and optimizing the industrial structure to promote high-quality development. According to the above theoretical mechanism, we propose Hypothesis 2.
4.1.3. Extended Research Hypothesis
4.2. Research Design
4.2.1. Model Settings
Linear Regression Model
4.2.2. Dynamic Panel Model
4.2.3. Dynamic Panel Threshold Model
4.2.4. Variables and Data
5. Empirical Results Analysis
5.1. Regression Estimation Results of the Linear Model
5.2. Test of Action Mechanism
5.3. Regression Estimation Results of Dynamic Panel Threshold Model
5.3.1. Threshold Effect Test
5.3.2. Analysis of Threshold Regression Results
5.4. Robustness Test
6. Conclusions, Countermeasures, and Suggestions
6.1. Conclusions
6.2. Countermeasures and Suggestions
6.3. Research Deficiencies and Future Prospects
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
1 | Considering the availability of data, the Tibet, Hong Kong, Macao and Taiwan in China were excluded, and the interpolation method or analogy method is used to estimate the missing data. |
2 | Here, the rationalization index of industrial structure is constructed based on the Thiel index, and the calculation formula is: . where Yi is the output of industry i in a region, Y is the total output of all industries in a region, Li is the number of employees in industry i in a region, and L is the total number of employees in all industries in a region, TI is between [0, 1], the smaller the value is, the more reasonable the industrial structure is; otherwise, the more unreasonable it is. |
3 | “Pollution Haven Hypothesis” holds that the inflow of foreign capital may also bring “dirty technology” to the destination of investment, thus worsening the environmental pollution of the host country. Therefore, the impact of foreign capital inflow on a country’s environmental pollution needs to be further verified. |
4 | Here, the global super-efficiency EBM model defines the directional distance function and sets it as non-oriented and variable return to scale. Combined with the global Malmquist index, the green total factor productivity of each Chinese provincial level is measured. The input indicators include: human capital, which is measured by the number of employment in three industries in each province; capital stock, the data of fixed capital investment flow is adjusted by the fixed asset price index, the price factor is removed, the accumulated depreciation is subtracted, and the actual fixed capital stock is calculated by the perpetual inventory method; energy consumption, measured by the total energy consumption of each province. Output indicators include desired output, measured by actual provincial GDP, and undesired output, which includes sulfur dioxide emissions and wastewater emissions by provinces. |
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Subsystem | Subindicator | Basic Indicator | Measurement Method | Sign |
---|---|---|---|---|
Economics | Economic growth | GDP growth rate per capita | Real GDP growth rate per capita | + |
Innovation efficiency | Number of authorized invention patent applications | Number of authorized invention patent applications/total population of region (piece) | + | |
Proportion of output value of high-tech enterprises | Output value of high-tech enterprises/total regional output value (%) | + | ||
Total factor productivity | Annual average growth rate of total factor productivity | + | ||
Financial efficiency | Deposit balance per unit GDP | Balance of financial institution deposits at end of year/regional GDP (%) | + | |
Loan balance per unit GDP | Balance of financial institution loans at end of year/regional GDP (%) | + | ||
Market development | Marketization degree | Marketization index | + | |
Society | Social progress | Internet penetration | Number of Internet users/total resident population (%) | + |
Educational expenditure | Total expenditure on education/regional GDP (%) | + | ||
Registered urban unemployment rate | Unemployed/sum of employees and unemployed (%) | − | ||
Social equity | Engel coefficient of urban households | Food, tobacco, and alcohol expenditure/total consumption expenditure of urban residents | − | |
Engel coefficient of rural households | Food, tobacco, and alcohol expenditure/total consumption expenditure of rural residents | − | ||
Social security | Participation rate for medical insurance | Number of medical insurance participants/total number of employees (%) | + | |
Participation rate for endowment insurance | Number of pension insurance participants/total number of employees (%) | + | ||
Ecology | Environmental pollution | Exhaust gas emissions per unit GDP | Sulfur dioxide emissions/regional GDP (ton/CNY 10,000) | − |
Wastewater discharge per unit GDP | Wastewater discharge/regional GDP (ton/CNY 10,000) | − | ||
Carbon emission intensity | Carbon emissions/regional GDP (ton/CNY 10000) | − | ||
PM2.5 | Mean value of PM2.5 concentration in different regions (mg/m3) | − | ||
Environmental protection level | Utilization rate of solid waste | Utilization amount of solid waste/generation amount of solid waste (%) | + | |
Domestic garbage removal rate | Domestic waste clearing and transportation volume/domestic waste generation volume (%) | + | ||
Urban sewage treatment rate | Urban sewage treatment capacity/total sewage discharge (%) | + | ||
Number of public toilets per capita | Total number of public toilets/total population of region (seats/10,000 people) | + | ||
Energy resources | Energy intensity per unit GDP | Total energy consumption/regional GDP (ton/CNY 10,000) | − | |
Forest coverage | Forest coverage (%) | + | ||
Opening up | Open trade | Total imports per unit GDP | Total imports/regional gross output value (%) | + |
Investment openness | Actual utilized foreign capital per unit GDP | Actual utilized foreign capital/regional gross output value (%) | + | |
Tourism openness | Proportion of overseas tourism income | Overseas tourism income/regional total output value (%) | + | |
Coordi- nation | Revenue coordination | Urban–rural income gap | Urban residents’ disposable income/rural residents’ disposable income | − |
Proportion of labor remuneration in GDP | Labor remuneration/regional gross output value (%) | + | ||
Consumption coordination | Urban–rural consumption gap | Consumption of urban residents/consumption of rural residents | − | |
CPI | Real consumer price index | − | ||
Production coordination | Rational production structure | Calculation based on Thiel index2 | − | |
Livelihood coordination | Urbanization rate | Urban population/total regional population (%) | + |
Variable | Variable Name | Variable Symbol | Mean Value | Standard Deviation | Minimum Value | Maximum Value |
---|---|---|---|---|---|---|
Explained variables | High-quality economic development | hqd | 0.301 | 0.1409 | 0.0852 | 0.812 |
Explanatory variables | Export trade | exp | 15.689 | 18.268 | 0.680 | 98.90 |
Control variables | Environmental regulation | er | 1.288 | 0.660 | 0.289 | 4.230 |
Government R&D investment | lngov | 3.956 | 1.615 | 0.904 | 7.589 | |
Education level | lnh | 2.137 | 0.127 | 1.693 | 2.548 | |
Domestic national capital investment | kr | 5.989 | 2.590 | 1.799 | 14.70 | |
Population density | lnpd | 5.427 | 1.263 | 1.946 | 8.251 | |
Threshold variables | Economic development level | lnpgdp | 9.850 | 0.771 | 7.887 | 11.815 |
R&D intensity | rd | 1.388 | 1.136 | 0.140 | 7.410 | |
Technical gap | tgap | 0.102 | 0.073 | 0.013 | 0.407 |
Variable | (1) | (2) | (3) | (4) |
---|---|---|---|---|
OLS | FE | FE | SYS-GMM | |
exp | 0.340 *** (7.392) | 0.223 *** (5.031) | 0.224 *** (4.676) | 0.115 *** (11.512) |
er | 0.308 (0.241) | −0.359 (−1.220) | 0.177 (0.579) | −0.699 *** (−2.581) |
lngov | 46.016 *** (3.209) | 1.037 *** (4.202) | 2.823 *** (3.564) | 0.055 * (1.943) |
lnh | 2.561 *** (6.672) | 27.252 *** (8.783) | 12.912 ** (2.230) | 15.109 *** (18.222) |
kr | 0.796 (1.034) | 0.301 ** (2.064) | 0.133 (0.796) | 0.323 *** (9.040) |
lnpd | 39.563 *** (3.291) | 1.018 (0.249) | −2.405 (−0.586) | 3.052 *** (4.767) |
hqdt-1 | 0.408 *** (22.068) | |||
Constant | −68.678 *** (−2.773) | −42.587 * (−1.937) | −2.715 (−0.092) | −33.504 *** (−9.984) |
Hausman | 110.20 *** | 73.46 *** | ||
Sargan | 0.766 (0.910) | 28.179 (1.000) | ||
AR(1) | −3.373 *** (0.001) | |||
AR(2) | 0.011 (0.991) | |||
Adj-R2 | 0.849 | 0.747 | 0.826 | |
Observed value | 600 | 600 | 600 | 570 |
Variable | (1) | (2) | (3) | (4) | (5) |
---|---|---|---|---|---|
Economic | Social | Ecological | Opening-Up | Coordination | |
exp | 0.025 *** (3.005) | 0.010 (1.100) | 0.005 (0.737) | 0.027 ** (2.742) | 0.026 *** (4.607) |
Constants | 7.111 * (1.650) | 3.222 (0.587) | 3.072 (0.401) | −4.444 (−0.691) | −14.969 *** (−2.891) |
Control variable | Yes | Yes | Yes | Yes | Yes |
Hausman test | 54.40 *** | 82.04 *** | 175.11 *** | 54.45 *** | 39.43 *** |
Individual effect | Yes | Yes | Yes | Yes | Yes |
Time effect | Yes | Yes | Yes | Yes | Yes |
Adj-R2 | 0.424 | 0.573 | 0.421 | 0.421 | 0.743 |
Observations | 600 | 600 | 600 | 600 | 600 |
Threshold Variable | Threshold Number | F-Value | p-Value | Threshold Value | Confidence Interval | BS Time | |
---|---|---|---|---|---|---|---|
Economic level | Single threshold | 56.01 *** | 0.000 | 9.957 | 9.955 | 9.959 | 500 |
Double threshold | 20.12 | 0.213 | 10.329 | 10.318 | 10.330 | 500 | |
Triple threshold | 13.34 | 0.587 | 10.904 | 10.844 | 10.905 | 500 | |
R&D intensity | Single threshold | 139.75 *** | 0.000 | 1.160 | 1.120 | 1.170 | 500 |
Double threshold | 16.40 | 0.177 | 2.030 | 1.815 | 2.040 | 500 | |
Triple threshold | 14.62 | 0.550 | 2.830 | 2.750 | 2.890 | 500 | |
Technical gap | Single threshold | 68.45 *** | 0.000 | 0.084 | 0.080 | 0.084 | 500 |
Double threshold | 29.29 | 0.107 | 0.052 | 0.051 | 0.056 | 500 | |
Triple threshold | 30.76 | 0.113 | 0.175 | 0.172 | 0.177 | 500 |
Variable | Economic Level | R&D Density | Technical Gap | |||
---|---|---|---|---|---|---|
lnpgdp ≤ γ1 | lnpgdp > γ1 | rd ≤ γ2 | rd > γ2 | tgap ≤ γ3 | tgap > γ3 | |
hqdt−1 | 0.164 *** (5.984) | 0.337 *** (17.209) | 0.188 *** (6.902) | 0.304 *** (5.738) | 0.152 *** (7.030) | 0.335 *** (19.790) |
exp | −0.006 (−0.710) | 0.017 *** (4.262) | −0.068 ** (−2.281) | 0.018 ** (2.425) | 0.008 (0.031) | 0.024 *** (3.435) |
Constant | −0.738 ** (−2.393) | −0.710 *** (−13.616) | −0.253 (−0.699) | −0.648 *** (−3.786) | −1.772 *** (−3.815) | −0.636 *** (−4.096) |
Control variable | Yes | Yes | Yes | Yes | Yes | Yes |
Sargan test | 25.774 (1.000) | 21.357 (1.000) | 23.616 (1.000) | 17.355 (1.000) | 25.889 (1.000) | 22.004 (1.000) |
AR(1) | −2.822 *** (0.005) | −2.343 ** (0.019) | −2.857 *** (0.004) | −2.399 ** (0.016) | −3.322 *** (0.001) | −2.668 *** 0.008 |
AR(2) | −0.959 (0.338) | 0.072 (0.942) | −0.973 (0.331) | −0.243 (0.808) | −0.137 (0.891) | 0.127 (0.899) |
Observations | 290 | 250 | 289 | 251 | 234 | 306 |
Variable | Linear Regression | Economic Level | R&D Intensity | Technical Gap | ||||
---|---|---|---|---|---|---|---|---|
Fe | SYS-GMM | lnpgdp ≤ γ1 | lnpgdp > γ1 | rd ≤ γ2 | rd > γ2 | tgap ≤ γ3 | tgap > γ3 | |
hqdt−1 | 0.862 *** (37.264) | |||||||
hqdt−2 | 0.023 (0.910) | 0.478 *** (17.340) | 0.237 *** (7.508) | 0.333 *** (3.688) | 0.176 *** (7.773) | 0.390 *** (28.435) | ||
exp | 0.040 *** (2.792) | 0.049 *** (43.712) | 0.156 *** (6.129) | 0.260 ** (2.278) | 0.015 (1.036) | 0.036 * (1.716) | 0.016 (1.463) | 0.025 *** (3.033) |
Constant | −12.173 (−1.148) | −20.561 *** (−17.120) | −6.363 *** (−8.774) | −0.540 *** (−3.278) | −0.887 *** (−4.581) | −0.459 (−1.309) | −0.998 *** (−2.773) | −0.557 *** (−5.025) |
Control variables | Yes | Yes | Yes | Yes | Yes | Yes | Yes | Yes |
Sargan | 28.294 (1.000) | 18.629 (0.9474) | 21.055 (1.000) | 19.641 (1.000) | 12.499 (1.000) | 24.310 (1.000) | 21.764 (1.000) | |
AR(1) | −2.356 ** (0.019) | −2.505 ** (0.013) | −3.056 *** (0.002) | −3.394 *** (0.000) | −2.592 ** (0.011) | −3.412 *** (0.001) | −2.327 (0.020) | |
AR(2) | −0.673 (0.501) | −0.840 (0.400) | 0.802 (0.423) | −0.114 (0.909) | −0.317 (0.751) | −0.947 (0.344) | 0.398 (0.697) | |
0.103 | ||||||||
Observations | 600 | 570 | 125 | 415 | 356 | 190 | 238 | 302 |
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Luo, H.; Qu, X. Export Trade, Absorptive Capacity, and High-Quality Economic Development in China. Systems 2023, 11, 54. https://doi.org/10.3390/systems11020054
Luo H, Qu X. Export Trade, Absorptive Capacity, and High-Quality Economic Development in China. Systems. 2023; 11(2):54. https://doi.org/10.3390/systems11020054
Chicago/Turabian StyleLuo, Haiyan, and Xiaoe Qu. 2023. "Export Trade, Absorptive Capacity, and High-Quality Economic Development in China" Systems 11, no. 2: 54. https://doi.org/10.3390/systems11020054
APA StyleLuo, H., & Qu, X. (2023). Export Trade, Absorptive Capacity, and High-Quality Economic Development in China. Systems, 11(2), 54. https://doi.org/10.3390/systems11020054