1. Introduction
In recent years, rapid industrialization and urbanization have created a dilemma between sustained economic growth and the deterioration of the living environment [
1,
2]. At present, China’s environmental pollution, the greenhouse effect, and other negative effects are more prominent in cities [
3,
4]. In this period of economic transition, Chinese President Xi Jinping has put forward five principles of development: innovation, coordination, green development, openness, and sharing [
5]. Innovation is the driving force of development, and green development is beneficial to push forward humans and nature coexisting in harmony [
6]. Therefore, for the purpose of improving green innovation efficiency, an effective approach is to bring green technology and environmental factors into the research framework of traditional innovation [
7]. In September 2018, the first “China Green Innovation Conference” was held in Beijing. In this context, research on green innovation is increasing.
The Yangtze River Delta urban agglomeration includes Shanghai and several cities in the provinces of Jiangsu, Zhejiang, and Anhui. This region is the most economically developed urban agglomeration area in China. However, there are many high-pollution and high-energy consumption industries in the Yangtze River Delta region. Therefore, the Yangtze River Delta region is facing serious ecosystem damage, environmental pollution, and resource shortages, which limit high-quality economic development [
8]. Studies have shown that green finance and fintech can affect high-quality economic development [
9]. One paper used a spatial econometric model to conclude that environmental regulation, foreign direct investment, and their interactions are conducive to high-quality economic development [
10]. And some studies showed that smart city policy can improve urban green total factor productivity by improving technical efficiency and achieve high-quality economic development [
11,
12]. Promoting green innovation and strengthening regional cooperation will also contribute to high-quality economic development [
13]. Therefore, the application of green innovation in economic development can serve as a boost to promote the high-quality economic development of cities in the Yangtze River Delta. The Yangtze River Delta urban agglomeration development plan, released in 2016, encouraged economic transformation and innovative upgrading [
14]. The development of the Yangtze River Delta should be included in the national strategy [
15]. In this condition, taking the Yangtze River Delta urban agglomeration as an example, researching the spatial differentiation and spatial association characteristics of green innovation efficiency is typical and representative [
16]. Such research is beneficial for the healthy and orderly development of the economy and innovation in the Yangtze River Delta region. In addition to expanding the study on traditional innovation efficiency, such research provides theoretical guidance for formulating regional green innovation-coordinated development policy.
Existing studies on green innovation activities mostly focus on the provincial level [
17,
18,
19]. Empirical research at the urban scale is relatively scarce. In fact, cities are the best carriers of innovation ecosystems and the most effective unit for the government to carry out environmental governance [
20]. The Yangtze River Delta region is one of the most developed regions in China [
21]. Therefore, it is more operable to boost the integrated development in the Yangtze River Delta at the urban scale. In terms of the measurement of green innovation efficiency, most studies adopt radial models (such as the CCR model and the BCC model) or non-radial models (such as the SBM model) [
22,
23]. A radial model requires the input–output variables to be reduced and expanded in the same proportion, ignoring the different characteristics of variables. Although a non-radial model can consider the difference of various input–output variables, the initial proportion relationship of variables may be lost, which affects the accuracy of measurement results to a certain extent. In 2010, Tone and Tsutsui proposed the EBM model with both radial and non-radial characteristics, which made up for the deficiencies of both the radial model and the non-radial model [
24]. In addition, as innovation has become the core driver of regional economic development [
25], research on green innovation efficiency needs to be enriched. Specifically, in this study, we first used a super-EBM model to measure the green innovation efficiency of 26 cities in the Yangtze River Delta from 2003 to 2018. Then, we analyzed the spatial heterogeneity of green innovation efficiency through the Moran index, constructed the spatial correlation network through the modified gravity model, and analyzed its characteristics. Finally, QAP was used to analyze the relevant influencing factors of green innovation efficiency.
The contributions of this study compared with the existing literature are mainly reflected in the following four aspects. First, the super-EBM model was constructed to measure green innovation efficiency at the city level, which made up for the defects of traditional DEA models and improved the accuracy of efficiency measurement results. Secondly, we built a modified gravity model to identify the spatial correlation of the Yangtze River Delta region’s green innovation efficiency from the viewpoint of the network, and further analyzed its evolutionary laws in depth. Thirdly, we introduced a block model into the spatial association analysis, dividing the Yangtze River Delta region’s green innovation efficiency into four blocks to analyze the spatial association between the different blocks. Finally, quadratic assignment procedure (QAP) regression was used to examine the factors influencing the spatial association network with the ability to overcome the multicollinearity problem between independent variables, making the regression results more scientific and reasonable.
The rest of this paper is organized as follows.
Section 2 is a literature review.
Section 3 describes the research approaches of this study.
Section 4 explores the spatial heterogeneity of green innovation efficiency.
Section 5 evaluates the spatial correlation network of green innovation efficiency and analyzes its influencing factors.
Section 6 summarizes and proposes policy implications.
2. Literature Review
Many scholars focus on green technology innovation because it is regarded as the vital method of reducing global pollutant emissions [
26,
27]. Various studies have researched themes related to green innovation concepts, green innovation efficiency measurement, drivers, and determinants [
28,
29].
Scholars have different understandings of the concept of green innovation [
30]. Some scholars define it as innovation conforming to the trend of environmental improvement [
31]. In addition, some scholars believe that green innovation is innovation that can realize the sustainable development of enterprises [
32], or ecological innovation to improve environmental efficiency and promote sustainable development [
33].
Existing studies have proposed a variety of green innovation efficiency measurement methods. Current research with regard to green innovation efficiency mostly evaluates efficiency by data envelopment analysis (DEA), and stochastic frontier analysis (SFA). The departure from the DMU frontier, according to SFA, is caused by stochastic disturbances and technical inefficiencies. The SFA was mainly applied to research enterprise efficiency and affecting factors, as well as economic research [
34,
35]. On the basis of the input and output of all DMUs in the sample, the DEA approach entails generating a minimal output possibility set that can adapt to all individual production modes. The input–output efficiency is then calculated using this set of possibilities. Carayannis et al. (2016) employed the multi-objective DEA model to assess the innovation efficiency of 185 regions in 23 European countries, and the results showed that innovation efficiency was not exactly the same in different regions and different stages [
36]. Tao et al. (2016) measured China’s green economy efficiency through an SBM model considering CO
2 emissions and energy consumption [
37]. Du, Liu et al. (2019) applied a two-stage network DEA with shared input to assess green technology innovation efficiency in regional enterprises [
17]. They explored regional differences in industrial enterprises’ green technology R&D and the transformation efficiency toward green technology. Through a modified SBM model, Liu et al. (2020) measured the green technology innovation efficiency in China on the basis of innovation failures and environmental pollution [
38]. Wang and Zhang (2021) studied the spatial characteristics of green innovation efficiency in 30 provinces in China from 2009 to 2017 based on the global super-EBM model [
39].
Another focus area in the literature mainly researches the determinants or affecting factors of green innovation efficiency. In general, the affecting factors of green innovation efficiency can be divided into direct factors and indirect factors. Direct factors include labor quality, industrial structure, energy consumption, technological innovation and so on. Indirect factors include economic development, government funds, regional infrastructure, foreign direct investment, openness, and environmental regulation. Luo et al. (2019) explored the influence of international R&D capital technology spillover on green technology innovation efficiency by establishing a spatial model [
40]. A scholar took the French automobile industry as an example to study the influencing factors of green innovation, and concluded that green innovation is affected by three aspects: the technical system, the demand condition system, and public policy [
41]. One study found that external policy tools and internal enterprise factors play different roles in different types of green innovation in the U.K. [
42]. Sun et al. (2021) applied data of 24 innovating countries from 1994 to 2013 to investigate the influence of technological innovation in some countries on the energy efficiency performance of neighboring countries. The results showed that knowledge spillovers can improve the energy efficiency performance of neighboring countries [
43]. Long et al. (2020) analyzed the evolution and driving factors of green innovation efficiency in the Yangtze River Economic Belt through establishing the super-SBM model and the spatial Durbin model [
44]. Research shows that environmental regulation is a significant driving force of green innovation [
45]. Yuan and Xiang (2018) confirmed that environmental regulation has improved the energy efficiency and environmental efficiency of the manufacturing industry in the short term, and attracted more R&D investment in the long term [
46]. Hong et al. (2019) found that cooperative innovation among organizations, governments, and institutions has a significantly positive impact on innovation performance [
47].
To sum up, studies on green innovation efficiency at home and abroad mainly focus on theoretical elaboration, efficiency evaluation, and influencing factors. Spatial agglomeration and spillover effects are significant characteristics of green innovation efficiency [
48]. However, there is still a lack of research on the spatial relationship of green innovation efficiency, and the research methods are mainly Moran’s I index, the spatial Durbin model, and other spatial econometric theories and technical methods [
49,
50,
51], which tend to attach importance to the attribute relationship between data. The investigation and application of relational data are ignored. The social network analysis method can investigate relational data and network relations, which can effectively supplement the research on spatial relationships of green innovation efficiency. Here, we used the super-EBM model to measure the green innovation efficiency of the Yangtze River Delta region, and further used the social network analysis method to build the green innovation efficiency of a spatial association network. In addition, this we described the characteristics of the spatial association network and analyzed its formation mechanism in order to provide theoretical guidance and decision-making reference for the sustainable development of the Yangtze River Delta region.
6. Conclusions and Policy Implications
On the basis of existing research, we applied spatial autocorrelation analysis, social network analysis, and QAP association analysis to research the spatial association of the Yangtze River Delta and establish an association network of the region’s green innovation efficiency using panel data from 2003 to 2018. First, the super-EBM model was applied to calculate the green innovation efficiency of 26 cities in the Yangtze River Delta, and the global spatial autocorrelation of the green innovation efficiency was researched, applying the global Moran index. Second, the local agglomeration features of the green innovation efficiency were explored by local Moran index scatter diagrams. Third, a spatial association network in the Yangtze River Delta region’s green innovation efficiency was constructed through a modified gravity model, and its overall features were analyzed to identify the position and function of each city in the spatial association network. Fourth, we researched the division of the Yangtze River Delta region’s green innovation efficiency and the internal association mechanism by block model analysis. Finally, the QAP was applied to explore the factors that influenced the formation of the spatial association network. Specifically, we came to the following conclusions.
(1) The spatial distribution of the Yangtze River Delta region’s green innovation efficiency varies greatly. Shanghai was at the forefront every year; Suzhou and Wuxi were also at the forefront for several years. The cities with lower green innovation efficiency were Anqing, Xuancheng, Tongling, and Chizhou.
(2) The analysis of local spatial autocorrelation showed that the cities in the east of the Yangtze River Delta region were mainly of the H-H spatial association mode, but those in the west had an L-L spatial association mode. This showed that the green innovation efficiency in the Yangtze River Delta region is spatially imbalanced and has significant spatial dependence.
(3) The features of the spatial association network showed that the degree centrality, betweenness centrality, and closeness centrality of Huzhou and Changzhou are higher than other cities. In the green innovation efficiency spatial association network, Huzhou and Changzhou also had the most relationships. In addition, Huzhou had the most beneficiary relationships.
(4) The Yangtze River Delta region’s cities’ green innovation efficiency was separated into four blocks using block model analysis, with each block holding various responsibilities. Cities with a high level of innovation and economic development made up the first block. These cities were the driving force behind the four blocks, accounting for the majority of the green innovation efficiency spillover. The second block was a broker, assuming the role of a middleman in green innovation efficiency. The third block mainly benefited from other blocks. Cities in the fourth block reaped a net gain as a result of spillover linkages from previous blocks.
(5) QAP regression analysis showed that geographic distance; the expansion of the difference in energy consumption and the environment pollution index; and narrowing the gap in economic development, the industrial structure, and green coverage will boost the formation of spatial association.
Based on the above conclusions, we put forward some policy recommendations as follows:
(1) The green innovation cooperation among the cities in the Yangtze River Delta should be strengthened to push forward the integrated development of the region. Shanghai, Jiangsu, and other provinces with better development of green innovation should strengthen their cooperation with Zhejiang and Anhui, expand the scope of their influence as the driving force of green innovation, and gradually narrow the disparity in green innovation efficiency between cities. The free and orderly flow of green innovation input elements should be promoted in the cities in the Yangtze River Delta in order to allow full play to the comparative advantages of each city and enhance the green innovation ability and comprehensive competitiveness of the Yangtze River Delta urban agglomeration through collaborative development.
(2) H-H cities should further improve green innovative technologies, and gradually abandon or upgrade industries with high pollution and investment; L-H cities are more suitable for capital-intensive development. The innovation development of H-L cities is at the forefront, but it also faces environmental problems. Such development should realize the coordinated development of green and economy by improving conversion efficiency. L-L cities have low R&D efficiency, and the upgrading of industrial structure is difficult. Therefore, they should pay attention to the adjustment of industrial structure and accelerate the improvement of R&D efficiency.
(3) From the perspective of block analysis, it is necessary for cities to reach a balance in the receiving relationship and spillover relationship to promote the balanced development of green innovation in various regions. In addition, the green innovation efficiency of the transmission mechanism between blocks must be optimized, promoting regional linkage between blocks and cooperative promotion.
(4) In order to improve the spatial correlation of green innovation efficiency in the Yangtze River Delta, the allocation of green innovation resources in the Yangtze River Delta should be optimized. The green innovation mode should be changed by relying on the expansion of the urban scale and economic input, developing and attracting technology-related talent, and adjusting industrial structure. In addition, the government should gradually include the environmental quality of the Yangtze River Delta region in the evaluation system of local officials, and the introduction of industries with high pollution and high energy consumption should be reduced to improve the management efficiency of resource utilization. Moreover, efforts should be made to narrow the gap in economic development between cities and promote green innovation and sustainable development in the Yangtze River Delta.
In view of the focus of the research and the limitations of objective factors, there are still some deficiencies in this paper, which need to be further studied in the future. First of all, due to the availability of data, the urban-scale green innovation efficiency evaluation system constructed in this paper is still limited. Further research is needed to obtain more reasonable indicators in the future. Secondly, on the basis of the spatial association study, the spatial panel model can be further used to study the influencing factors of green innovation efficiency and explore the dynamic mechanism of green innovation efficiency evolution.