1. Introduction
Nowadays, China’s economy has been transitioning from a phase of rapid growth to a stage of high-quality development. It is imperative that develop a modernized economy. As a matter of fact, like many countries in Asia and the Pacific, China still faces the prominent problem of balancing economic growth and environmental protection [
1]. In 2018, data from the IEA, for every 1% increase in global economic output, carbon dioxide emissions increased by nearly 0.5%. Driven by the growth of energy demand, global energy related carbon dioxide emissions have increased by 1.7% [
2]. For this reason, China has taken various measures for energy saving and emissions reduction, including command control tools (i.e., carbon emission intensity limit and quota limit) and environmental economic policies (e.g., carbon emissions trading system). It has become an inevitable choice in the critical period of China’s economic transformation to emphasize economic development on the premise of environmental protection. The greening of the economy can be a long-term driver of sustainable economic growth [
3].
Yangtze River Economic Belt (YREB) is chosen as the object of this study because it is an important region for China’s green economic development. Relying on the Yangtze River’s advantages of convenient water transportation and nature resources, provinces in YREB have experienced large-scale development since 1990s. Eight provinces in the middle and upper reaches of the Yangtze River have vigorously developed the heavy chemical industry [
4], their products are shipped to the coastal areas via the Yangtze River and exported abroad. According to National Bureau of Statistics of China (NBSC), from 1990 to 2018, steel production had increased from 15.49 to 195.41 million tons approximately. Chemical fertilizer outputs had also rocketed nearly fivefold from 7.87 to 38.34 million tons and cement production surged fifteen times. In addition, the number of enterprises with high energy consumption and high pollution is increasing rapidly, such as non-ferrous metallurgy, petrochemical, thermal power. However, with burgeoning economy, ecological environmental problems are becoming more and more acute. Over the last two decades, about 60% of China’s water pollution accidents have occurred in the Yangtze River basin. As well as the annual discharge of wastewater and chemical oxygen demand (COD) from the Yangtze River have accounted for more than 40% and 30% of the national total after 2010, respectively.
In this context, The State Council of China (SCC) issued the policy in 2014, namely Guiding Opinions on Golden Gramme to Promote the Development of the Yangtze River Economic Belt. For the first time, it defined the scope of the YREB, which contains the entire administrative area of 11 provinces (i.e., Shanghai, Jiangsu, Zhejiang, Anhui, Jiangxi, Hubei, Hunan, Chongqing, Sichuan, Guizhou, and Yunnan). The aim of this policy is to build YREB into a golden economic belt featuring more beautiful ecology, more smooth transport, more coordinated economy, more integrated market, and more scientific mechanisms. As developing green economy has gradually become the basic requirements of YREB. Consensus has been reached on ecological protection, but due to the different economic bases of each province, there are still some difficulties in the development options.
Combined with propensity score matching (PSM) and difference-in-differences (DID), this paper quantitatively analyzes the impact of YREB strategy on regional ecological efficiency. Considering the availability of data and the objectivity of research, on the basis of the statistics released by the Chinese government, the balance panel data is set up. Environmental total factor productivity (ETFP) is taken as an important indicator to measure the eco-efficiency. The contributions of this study are twofold: First, ETFP of 30 provinces in China are calculated, and the scores show that China’s provincial ETFP from 2005 to 2017 are on a downward trend and have a feature of high-east and low-west. Similarly, the YREB also have such characteristics. Second, in empirical part, the implementation of YREB strategy is regarded as the policy experiment, observing its impact on regional ETFP after 2014. The findings indicate YREB strategy had no positive effect on regional ETFP until the year of 2017, but it had effectively boosted regional GDP growth, especially for the middle reaches of the Yangtze River. The dynamic effect test shows that YREB strategy has hysteresis, in the long term, it can improve the regional eco-efficiency and economic growth. Meantime, energy saving and pollution emission reduction are still the main tasks of the 11 provinces in YREB. This study has important reference significance for evaluating the effect of national strategy on ecological environment protection and economic development and it also provides reference for policymakers.
The remainder of the paper is organized as follows:
Section 2 is literature review;
Section 3 introduces the materials and methods.
Section 4 is the empirical results.
Section 5 discusses the results further.
Section 6 presents the conclusions and policy implications.
3. Materials and Methods
3.1. Evaluation of ETFP
3.1.1. SBM Model Considering Undesirable Output
This paper used the SBM (Slack-based measure) model considering the undesirable outputs, which was based on DEA (data envelopment analysis) method to evaluate the ETFP. In economic activities, people can get good output such as gross domestic product (GDP) after investing certain production factors, but at the same time, it also produces the bad output, such as wastewater, exhaust gas, and solid wastes, which people do not expect. According to Zhou et al. [
51], carbon dioxide emission performance index selection ideas, considering a production process where each province employs capital stock (
), labor force (
), and energy consumption (
) as inputs to generate gross domestic product (
) as desirable output and CO
2 emissions and COD (
) as undesirable output. Usually, the production process, which includes the undesirable output of pollution emissions, is called environmental production technology. The production technology set can be defined as Equation (1):
Then, ETFP of 30 provinces in China from 2005 to 2017 were calculated by the SBM model of efficiency in DEA. The radial model assumes that all inputs or outputs vary in the same proportion, so it is considered unable to explain the possibility of excessive or insufficient output, i.e., the slack problem. In order to solve this problem, Tone [
52] constructed a slack-based measure DEA, which directly added slack variables to objective function. The non-effective DMUs (Decision-Making-Unit) do not need to be improved in the same proportion according to the ray direction, this maximizes the improvement. On this basis, Tone [
53] then proposed a non-parametric DEA scheme for measuring efficiency in the presence of undesirable outputs. As Equation (2) shows the measurement model, which considers the undesirable outputs:
where
represents the ETFP of
province in
period and
,
and
represent the slack variable of input, desirable output, and undesirable output, respectively.
is a decreasing function, and ranges from 0 to 1.
,
, and
stand for the number of factors for inputs, desirable outputs, and undesirable outputs, respectively. If and only if
and
, the DMU is SBM efficient. If
, the DMU is inefficient, so that inputs and outputs need to be improved.
3.1.2. The Model of Malmquist Index
The Malmquist Index (MI) was first proposed by Malmquist [
54]. Caves et al. [
55] and Färe et al. [
56] calculated the Malmquist index of DMU by geometric average method. Färe et al. [
57] then further decomposed the Malmquist productivity index into technological progress and technical efficiency indices in order to analyze the drivers of productivity change [
58]. This paper first calculated the efficiency levels of period
and period
for each DMU using Equation (1). Then, the cross-efficiency of period
and period
was evaluated. The MI is defined by the ratio of the above four efficiency values, it is expressed as Equation (3) from period
to
.
where
and
stand for the values of DMU evaluated in period
.
and
stand for that in period
.
, which is equal to
in Equation (1), is the efficiency of a DMU in
period. Whether input orientation or output orientation, if MI is greater than 1, it means productivity increases, and if MI is less than 1, it indicates reduced productivity.
3.2. Policy Effect Evaluation Model based on Unmeasurable Variables
In economics, it is often necessary to evaluate the policy effect. This kind of research is called program evaluation, and the program effect is also known as the treatment effect. All the participants were divided into treatment group or the treated. The control group or comparison group was composed of non-participants [
59]. Rubin proposed a counterfactual framework, which was later called Rubin Causal Model [
60]. It uses the dummy variable
to indicate whether individual
participates in the project, where
is participating and
is not participating.
is usually called the treatment variable. The average processing effect of project participants is called ATT (Average Treatment Effect on the Treated). In this paper, differences-in-differences (DID) and propensity score matching (PSM) method, proposed by Heckman et al., is used to estimate the policy effects [
61,
62]. This method is used when the treatment variable
has unobservable variables that do not changed with the time. The advantage of this approach is that it can control the difference between groups, which is unobservable and time invariant. Supposing there are two periods of panel data, the period before or after the experiment (e.g., development policy) was
or
.
is the potential outcome for all the participants, and the experiment has not yet occurred in period
. The experiment has already taken place in period
, so there are two potential outcomes, namely,
(the treatment group) and
(the control group).
The premise of PSM-DID is the assumption that the mean value can be ignored. Or to put it another way, if there is no experiment, the trend of variables in the treatment group and the control group is similar and have the same time trend. The assumption is
. If this assumption is established, the average treatment effect can be estimated based on matched samples. The Equation (4) is as follows:
where
is the common support,
is the treatment group, and
is the control group.
is the effective number of individuals for the treated.
is the weight corresponding to the matched
. It can be determined by kernel matching.
Based on the above method, this paper sets the regression model as follows:
In Equation (5), is the explained variable. , whose value is , stands for individual-dummy variable, the value of or means the province is in the control group or in the treatment group. As well as, the value of of or indicate that it is before or after the time of the policy implementation, respectively. The coefficient , which indicates the net policy effect, is the core parameter that is to be estimated. indicates that the policy has a positive effect. On the contrary, it is negative. is a series of control variables. is a random error term. Furthermore, in this paper, Shanghai, Zhejiang, Jiangsu, Anhui, Hubei, Hunan, Jiangxi, Chongqing, Sichuan, Guizhou, and Yunnan are regarded as the treatment group, and the other 19 provinces in China are the control group. The implementation time of YREB strategy is 2014.
3.3. Data Sources
Based on integrity and accuracy, data of the period from 2005 to 2017 were collected for 30 provinces in China, excluding Tibet, Hong Kong, Macau, and Taiwan. Moreover, 2005 was set as the starting year because China formally has taken the energy efficiency and the carbon emission into the constraints of economic development. Since 2010, the Chinese government has begun to set specific targets for energy saving and emission reduction in the Twelfth Five-Year Plan for Social and Economic Development of the State and the Thirteenth one. Besides, as the official data of China’s total energy consumption is only up to 2017, considering it is an important indicator for calculating ETFP and CO2 (carbon dioxide) emissions, this paper took 2017 as the ending time. All the indexes related to prices were adjusted according to the unchanged prices in 2000.
However, the physical capital stock (
) and CO
2 emissions need to be calculated. The physical capital stock of 30 provinces can be calculated by the perpetual inventory method [
63]. The equation for estimating the level of capital stock is
, where
represents the province,
stands for the year,
is the capital depreciation rate, and
is gross capital formation. According to the existing literatures, most scholars take Chinese depreciation rate (
) as 9.6%. The physical capital stock for the period from 2005 to 2017 can be estimated by the further equation:
, where
is the China’s physical capital stock for the year of 2000, which was evaluated by Zhang [
64].
In addition, according to the calculation method proposed by IPCC, CO
2 emissions mainly comes from fossil energy combustion and cement production [
65].
represents seven fossil fuels (including coal, coke, gasoline, kerosene, fuel oil, diesel oil, and natural gas) that are considered, and carbon dioxide data for each province are calculated. For this, the equation is
, where
represents the total energy consumption of
in the year
of
province. The data for this was obtained from China Energy Statistical Yearbook from 2006 to 2018.
is average low calorific value of seven fossil fuels,
is carbon emission coefficient,
stands for carbon oxidation factor, and 44 and 12 represents the molecular weights of carbon dioxide and carbon, respectively.
stands for the cement output.
is 0.527, which is the coefficient of CO
2 emission in cement production [
66].
Furthermore, the other variables used in this paper were mainly from China Statistical Yearbook, China Energy Statistics Yearbook, China Environmental Statistics Yearbook, China Industrial Statistics Yearbook, and the Statistical Yearbooks for 30 provinces over 2006 to 2018. The statistical characteristics of each variable are summarized in
Table 1.
3.4. Variables Selection
Variables of models are shown in
Table 2. As a comparison, GDP is taken as the explanatory variable in the policy effect evaluation of the YREB.
First, per capita GDP (), urbanization (), service sector (), ecological protection (), and regional characteristics (i.e., eastern, central, and western) were set as the covariates of propensity score matching. It is ensured that range of propensity score for the treatment group and the control group had the common support as far as possible.
Second, according to Equation (5),
is a set of control variables that should be considered (see
Table 2). Because the aim of YREB was economic development and ecological protection, the control variables of policy effect test were divided into two parts, i.e., the development variables and the protection ones. There were seven development variables used, including GDP per capita (
), average years of education (
), regional industrialization (
), financial development (FIN), foreign direct investment (FDI), innovation ability (
and
), infrastructure construction (
). Two protection variables were selected, i.e., regional energy consumption intensity (
) and regional pollution emission intensity (
).
5. Discussion
The YREB Strategy as a macro-policy, which was issued by the Chinese government in 2014. Its purpose is to realize the regional ecology and economy common development. Through a streak of regional coordinated development policies and ecological protection policies, this strategy hopes to achieve regional common development and harmonious ecological environment. In view of the above empirical research, this paper focuses on the following discussion.
First, the YREB strategy has a clear implementation time, clear strategic intention, and detailed strategic planning. These above factors provide the basis for the empirical research. However, this paper has limits and difficulties of data collection. Some important indicators can only be collected until 2017, which leads to a small sample size in the model estimation, thus may influence the regression results. For instants, the regression results show that the YREB strategy has no significant effect on regional ETFP, however, in the dynamic test, the YREB policy has a lag effect in the long run, and it promotes regional ecological efficiency and economic growth. Actually, according to the latest indicators released by the National Bureau of Statistics of China [
69], from 2017 to 2019, the energy consumption of GDP per 10,000 yuan in the YREB has decreased by 12.5%, and the turnover of technology market has increased by 128.6%, indicating that the industry in this region is to realize the transformation under the guidance of policies, with the concept of innovation-driven green development.
Second, in the rapidly developing countries, the economy can exceed sustainable limits, damaging the natural systems and vastly shrinking biocapacity [
70]. The water resources in the basin have a huge attraction to enterprises, especially heavy chemical companies, and high energy consuming ones. The YREB is the fastest growing region in China, and the second industry is the support of its economic growth. The resources in the Yangtze river basin have caused more human activities and exacerbated regional ecological deterioration. Model regression results (see
Table 6 and
Table 9) also reflects the reality of problems, although the level of regional economic development has improved (e.g., per capita GDP and financial development), the ETFP is decreasing. In addition, that is why the strategy has a negative effect on ETFP in the middle reaches.
Third, based on this study, this paper proposes two possible research directions. For one, it is necessary to examine the policy effect on the main cities along the Yangtze River. This will be more microscopic and specific. It can also greatly increase the number of samples. For another, the aim of YREB is to build a golden economic belt featuring more beautiful ecology, more smooth transport, more coordinated economy, more integrated market, and more scientific mechanisms. The ecological environment protection of the YREB is the premise of economic growth, and seeking development through conservation is the key point. Therefore, it is also necessary to test whether the policies of development and protection in YREB have affected the regional ecological protection.
6. Conclusions and Policy Implications
6.1. Conclusions
The objective of this paper is to examine the impact of the YREB strategy on ETFP, which is used as an important index to measure the eco-efficiency. As a useful measurement index, it not only considers the ideal economic output but also considers the environmental impact of the bad output in the production process.
First of all, the resulting ETFP scores at the provincial level indicate the obvious spatial differences and the overall trend is decreasing. The variation of those scores across provincial regions provides an important insight for policy. The average ETFP for the eastern region in China is the highest (0.577), is followed by the central region (0.384), and is the lowest in the western region (0.327). As the YREB stretches across China’s territory from east to west, the ETFP of the YREB also accord with this characteristic, with high-east and low-west values. However, the average ETFP of YREB (0.487) is 11.69 percentage points higher than that of the national (0.436). This indicates that the YREB has a better efficiency advantage. Especially, the provinces in the downstream area, such as Shanghai (ranked first), Zhejiang (ranked fourth), and Jiangsu (ranked fifth). In recent years, although some provinces have declined (e.g., Anhui and Guizhou) obviously, the YREB’s provinces still have an advantage over others in their region.
Moreover, then from the empirical research, there are four conclusions. First, as a macro-policy, YREB does not have a significant impact on regional ETFP yet, it promotes regional GDP by 3.63%. Second, the policy effect tests for different regions in YREB show that there are obvious regional differences in the YREB. The downstream provinces have developed economy and high ecological efficiency. The economic growth rate of the middle reaches is the fastest. As the high-pollution and high-energy-consuming industries have greatly damaged the ecological environment, the ETFP of this area is generally mediocre. The development of the upstream area is backward, so the efficiencies are generally low. Third, according to the policy dynamic effect test, YREB strategy has a dynamic effect both on the regional ETFP and regional economic development, however, if the variables are lagged by 3 years, YREB strategy will be effective. Last but not least, from the significance of the control variables, the infrastructure construction level is positively correlated with ETFP, while per capita GDP, financial development and energy consumption intensity have a negative effect on ETFP.
6.2. Policy Implications
Modern human cultures have the technical, economic, and management capabilities to cope with natural resource and environment constraints and to hedge against risks and uncertainties. What is missing is an adequate political consensus to economically motivate these capabilities [
71]. The above research conclusions provide the following implications for deepening the YREB strategy.
First, the promotion of regional ETFP is based on the joint influence of labor, capital, energy consumption, economic growth, and environmental pollution emissions. The key to coordinate these common elements lies in the transformation of development principle, the innovation of science and technology, the enhancement of human capital and the strengthening of environmental protection. Therefore, the YREB strategy should focus on improving the policy guidance in these aspects and bringing more policy dividend through greater regional policy.
Second, the successful experience of most developed economies in the world shows that there is no contradiction between economic development and environmental protection. Appropriate management system and coordination mechanism are important, as well as legal constraints. This paper shows that there are lots of differences in economic development and policy effects in YREB. Provinces should focus on exploring the system and mechanism of green economy development. They should break interest barrier and maximize common interests. In addition, the national legislative department should establish a complete system of laws to provide legal protection for protecting ecological environment.
Third, the governments in the YREB should encourage scientific and technological innovation in order to improve regional eco-efficiency. They should issue policies to attract high-end talents and expand the opening of the regional economy continuously.
Lastly, the governments should continue to deepen the transformation strategy of traditional industries, and promote enterprises in the region to take the road of green development. The whole system should strive for new three-high targets with the higher quality of supply system, the higher input–output efficiency, and the higher development stability.