4.5.1. Regional Heterogeneity Analysis
Given the significant regional disparities in economic development, studying the impact of CPU on NQPF must account for differences in economic, policy, and technological conditions across regions. Since Chinese provinces vary substantially in their development levels, industrial structures, and policy environments, the mechanisms through which CPU affects NQPF may differ accordingly. Ignoring these regional differences may introduce bias into the overall analysis, so it is important to analyze the different regions separately.
According to the division found in the China Statistical Yearbook, this study divides the sample of 30 Chinese provinces into four groups: eastern, central, western, and northeastern regions. The eastern region is the most economically developed part of China, characterized by a high level of industrialization, strong innovation capacity, and a more market-oriented economic structure. It includes major economic hubs such as Beijing, Shanghai, and Guangdong, which are home to a dense concentration of advanced manufacturing, financial services, and high-tech industries. The region also has well-developed infrastructure that supports business growth and technological innovation. Unlike the eastern region, which has a more advanced high-tech sector, the central region relies on resource-intensive production and traditional manufacturing. While infrastructure improvements and policy support have facilitated industrial expansion, the transition toward low-carbon and high-value-added industries remains slow. The western region, which includes provinces such as Xinjiang and Gansu, is less developed due to geographic and infrastructural constraints, and it relies more on resource-based industries and government support. The northeastern region, historically an industrial base, has faced economic restructuring challenges in recent years, leading to slower growth compared to the eastern provinces.
Table 8 presents the regression results for different regions: column (1) corresponds to the eastern region, column (2) to the central region, column (3) to the western region, and column (4) to the northeastern region. The results show that CPU significantly inhibits NQPF in the eastern and western regions, as indicated by the significantly negative coefficients. In contrast, the coefficients for the central and northeastern regions are not statistically significant, suggesting that CPU does not have a discernible impact on NQPF in these areas.
The impact of CPU on NQPF varies significantly across regions due to differences in economic structure, industrial development models, marketization, policy dependence, and government intervention. The eastern and western regions experience a significant inhibitory effect from CPU on NQPF, whereas the central and northeastern regions remain largely unaffected. First, as the most economically developed area in China, the eastern region relies heavily on high-tech industries, advanced manufacturing, and modern services, particularly in sectors such as new energy, intelligent manufacturing, biopharmaceuticals, and information technology. These industries are highly dependent on a stable policy environment, and when the CPU increases (e.g., adjustments in carbon taxes, fluctuations in carbon markets, and changes in environmental subsidies), firms tend to delay investment and R&D, thereby hindering the development of NQPF. Moreover, enterprises in the eastern region operate in a highly market-oriented economy, with a large proportion of private and foreign-owned firms that are more sensitive to policy instability. When faced with policy uncertainty, these firms often adopt conservative strategies, reducing investments in low-carbon technologies, which further constrains NQPF development. In contrast, the central region’s industrial structure remains more traditional, with a strong reliance on manufacturing and agriculture. Businesses in this region are more driven by existing production systems and cost efficiency rather than policy incentives for low-carbon transitions, which weakens the influence of CPU. Similarly, the northeastern region, which has historically relied on heavy industries and state-owned enterprises, has faced economic stagnation and industrial restructuring in recent years. Given that firms in this region already have low incentives for technological innovation and limited investment capacity, policy uncertainty does not have a substantial impact on their decision-making regarding NQPF.
On the other hand, the western region, despite being less developed, experiences a significant inhibitory effect from CPU on NQPF due to its economic structure, which relies heavily on resource-based industries, energy extraction, and government investment. When the CPU increases, uncertainty surrounding new energy projects, emerging manufacturing industries, and infrastructure investment escalates, leading firms to delay investments and stalling the growth of NQPF. In recent years, the western region has accelerated its transition to renewable energy industries such as solar and wind power, but these projects require long-term, stable policy support. Increased CPU usage may deter investors and delay industrial expansion, constraining the development of emerging sectors. Furthermore, government-led infrastructure investments, which are critical for the western region’s economic growth, may become more uncertain under CPU, affecting the allocation of funds and slowing the development of projects related to NQPF. Consequently, heightened CPU lowers investment confidence in the western region, restricting NQPF development. In contrast, firms in the central and northeastern regions are less sensitive to policy uncertainty. The central region’s manufacturing industries depend largely on domestic supply chains rather than policy-driven subsidies, making them less affected by CPU fluctuations. Meanwhile, northeastern firms, due to industrial decline, weak investment incentives, and population outflows, already exhibit low levels of innovation and technological upgrading. Investment and production decisions in the northeast rely more on government financial support rather than market dynamics, reducing the impact of CPU on NQPF.
4.5.2. ESG Performance of Local Governments
Climate policy uncertainty itself is not merely a negative factor; there are underlying positive motives and potential impacts behind it. Governments often face complex and rapidly changing challenges, such as extreme climate events, shifts in international cooperation, and rapid technological advancements. To effectively address these unforeseen situations, governments need to maintain a certain degree of flexibility in their policies in the short term, avoiding rigid policies that could hinder their ability to respond. This flexibility, while essential for dealing with sudden crises and adapting to new circumstances, inevitably results in an increase in policy uncertainty. However, whether climate policy uncertainty leads to positive or negative outcomes largely depends on the government’s commitment to sustainable development. If the government prioritizes sustainability and demonstrates a strong commitment to economic transformation, this policy uncertainty may instead create opportunities for innovation. When firms and stakeholders recognize that the government’s long-term goal is sustainable development and that this goal is consistent and persistent, they are more willing to invest in green technologies and clean energy, even amid short-term uncertainties, to meet future policy demands. The government’s performance in terms of sustainable development is a critical factor driving innovation. A well-performing government typically conveys its commitment to green development through transparent policy, established legal frameworks, and incentives. Such actions send a stable, long-term signal to the market that, despite short-term policy changes, green economic development is the future direction. As a result, in the face of policy uncertainty, firms are encouraged to develop new technologies to meet potentially stricter environmental standards and evolving policy requirements, thereby fostering innovation. This innovation is not limited to technology alone but also extends to management, production processes, and business models. By constantly adapting to climate policy uncertainty, firms enhance their ability to respond to external changes. These factors above all drive the development of NQPF.
Therefore, in provinces where the government demonstrates strong performance in sustainable development, CPU may not necessarily inhibit NQPF.
Government ESG scores provide a good measure of the performance of governments in sustainable development. The 2023 Tsinghua University Sustainable Development Report provides government ESG ratings for Chinese provinces from 2016 to 2020, categorizing them into six levels: AAA, AA, A, BBB, BB, and B. This study refers to these ratings and classifies provinces into high and low ESG groups based on their average ratings over this period. Provinces that consistently maintained an ESG rating of A or higher (i.e., A, AA, or AAA) from 2016 to 2020 are classified as high ESG provinces. These include Beijing, Shanghai, Jiangsu, Guangdong, and Zhejiang. The remaining provinces, which did not meet this criterion, are classified as low ESG provinces.
Table 9 reports the regression results. The first column shows the regression results for low local government ESG, and the second column shows the regression results for high local government ESG. It can be seen that climate policy uncertainty did not dampen new quality productivity if local government ESG scores were high, which indicates that the government’s capacity for sustainable development effectively mitigates the inhibitory effect of CPU on NQPF.