1. Introduction
Over the past three decades, amidst the increasing frequency of climate extremes and worsening global warming, the governmental focus has increasingly turned towards concurrently advancing the economy and the ecosystem, heightening the urgency for carbon reduction efforts [
1,
2,
3]. In response to these unsustainable trends, policymakers are actively pursuing pathways to achieve a low-carbon society, and in some cases, aiming for a zero-carbon society [
4,
5]. Urban economies contribute approximately 80% to the GDP and emit about 70% of carbon emissions, and so cities are recognized as pivotal arenas for carbon mitigation strategies and sustainable development initiatives [
6,
7]. As the world’s largest developing nation and a significant carbon emitter, China is proactively exploring and implementing low-carbon policies to combat climate change [
8,
9,
10]. However, substantial heterogeneity persists among Chinese cities regarding policy frameworks, scale, and economic development, emphasizing the need for further research to elucidate carbon mitigation dynamics at the municipal level [
11,
12].
In pursuit of its carbon reduction and sustainable development objectives, China introduced over 7200 low-carbon policy initiatives and climate change measures from 2007 to 2022 [
13,
14]. In 2007, the State Council of China launched the National Program for Responding to Climate Change, marking the beginning of China’s comprehensive policy approach to addressing climate change [
15]. In the realm of Chinese climate policy, a pivotal initiative emerged in 2009 with the inception of the first national program for climate change response by a developing nation. This foundational document laid the groundwork for subsequent provincial-level low-carbon pilots aimed at tailoring development pathways to local contexts [
16]. Building upon this framework, the State Council furthered these efforts in 2010 through the issuance of the Notice on the Pilot Work of Low-Carbon Provinces, Regions, and Cities [
17]. This notice formally introduced the concept of low-carbon development at the urban level, cementing it as the trajectory for future urban endeavors [
18]. The year 2013 marked a significant milestone with the launch of seven pilot cities for carbon emissions trading, demonstrating China’s commitment to involving enterprises in pursuing low-carbon development [
19]. Additionally, on 17 June 2013, China inaugurated its first National Low Carbon Day, dedicated to promoting low-carbon development principles and advancing efforts to reduce greenhouse gas emissions in urban areas [
20]. Subsequently, in 2015, China submitted its autonomous contributions to the United Nations, outlining its efforts to combat climate change [
21]. This submission laid the groundwork for China’s pursuit of objectives outlined by the United Nations Framework Convention on Climate Change (UNFCCC) [
22]. China set a dual-carbon objective in 2021, aiming for carbon peaking by 2030 and carbon neutrality by 2060, underscoring its proactive stance toward achieving these goals across its cities. That same year, China achieved a governance milestone by incorporating carbon neutrality into both the 14th Five-Year Plan and the government’s work report for the National People’s Congress. Moreover, in 2021, China established a national carbon emissions trading market, positioning itself as the world’s largest market in terms of greenhouse gas emissions [
23]. However, at the regional level, particularly within local jurisdictions, the strength of low-carbon policies often exceeds that at the national level [
24,
25]. Local low-carbon policies demonstrate greater specificity and adaptability compared to national ones. Therefore, there is a critical need to quantify this phenomenon through the concept of policy intensity. This study aims to develop a policy indicator framework employing machine learning techniques [
26]. This framework aims to assess the index of policy intensity at the prefectural municipal level in China from 2007 to 2022. Furthermore, it seeks to analyze the impact of policy intensity on carbon emissions.
The purpose of this paper is to examine how policy intensity influences reductions in carbon emissions. Building on this premise, the contributions of this study are two points. First, its approach to variable measurement is methodologically rigorous and robust. Departing from traditional practices reliant on proxy variables, this study extends the methodological foundation by employing machine learning methodologies [
26]. This enables the development of a comprehensive indicator system designed to evaluate the intensity of low-carbon policies. Such an approach enhances the authenticity and scientific rigor of measuring policy intensity at the municipal level, distinguishing it from previous studies. Second, in the realm of selecting variables for carbon emission reduction, this study adopts a refined methodology inspired by the latest study [
2]. By employing the continuous dynamic distribution method of the improved kernel density function, it overcomes the limitations associated with traditional techniques. This study applies their continuous dynamic distribution method using the improved kernel density function to analyze carbon emission reduction data across China’s prefecture-level cities. This approach circumvents the constraints of traditional methods, which often rely on province-level panel data with limited sample sizes. Additionally, this study expands the scope of research on low-carbon policies and carbon emission reduction. While the existing literature has identified scientific and technological innovation and industrial transformation paths as mechanisms through which low-carbon policies affect carbon emission reduction [
27,
28,
29], few studies have explored mechanisms from the perspectives of welfare crowding out and pollution transfer. By incorporating these perspectives into the research framework, this study broadens the understanding of the relationship between policy intensity and carbon emission reduction. Consequently, it facilitates the analysis of the carbon emission reduction effects attributed to the intensity of low-carbon cities. Moreover, it provides a scientific basis for national and local governments to formulate urban low-carbon development plans and supportive policies within the context of the “dual-carbon” strategy. Additionally, this study presents a reference model for the low-carbon sustainable development pathways of other developing nations based on China’s experiences in low-carbon road development.
The increase in carbon emissions resulting from economic growth has triggered global warming, underscoring the critical need to balance economic prosperity with environmental preservation for sustainable development [
30,
31]. Research highlights that reducing carbon emissions is essential for fostering sustainability [
32,
33,
34]. There are two primary approaches to achieve this: leveraging scientific, technological, and innovative advancements to enhance energy efficiency and drive industrial transformation [
35,
36], and implementing regulatory measures to limit carbon emissions [
37]. Among these methods, the effectiveness of low-carbon policies warrants thorough investigation. At the city level, such policies play a crucial role in achieving the Sustainable Development Goals [
38]. Accordingly, extensive academic discourse has emerged on the efficacy of stringent policies in reducing carbon emissions at urban levels [
39,
40], thereby advancing the SDGs. Most research in this area focuses on developed countries, leaving a significant gap in studies of developing nations [
41]. While some scholars have examined the objectives, developmental contexts, and assessment methodologies of low-carbon policies [
42,
43], little attention has been paid to investigating the impact of carbon intensity on emission reduction in low-carbon cities. This gap may stem from challenges in accurately measuring city-level carbon dioxide emissions, which hinders the creation of comprehensive datasets. This study addresses this gap by employing an enhanced continuous stochastic kernel density function method, building on a dynamic distribution approach, to quantify China’s carbon emissions at the prefecture-level city scale from 2007 to 2022 [
44]. Unlike conventional methods like vegetation carbon sequestration and urban satellite data, this approach mitigates subjective biases in sample partitioning, ensuring consistent traversal outcomes and transfer probabilities in the calculation results. Furthermore, it directly assesses the inherent nature of carbon emissions, thereby reducing the impacts of extraneous factors.
In the realm of urban low-carbon policies, scholarly attention predominantly focuses on elucidating the determinants of carbon emissions, outlining mechanistic pathways, and devising evaluation frameworks [
45,
46]. Significant contributions include the establishment of evaluative metrics by scholars, which serve as benchmarks for assessing the effectiveness of low-carbon policy initiatives. Liu et al. (2022) employed spatial Markov chains, nonparametric kernel density estimation, and spatial variability function models to analyze the spatial and temporal evolution of carbon emission intensity [
47]. Zhou et al. (2021) utilized a double-difference approach to evaluate the effectiveness of low-carbon policy pilots [
48]. Guo and Yu (2024) applied geographically weighted regression methods and exploratory spatial data analysis to measure the carbon emission rates in resource-based cities, all of which provide valuable references [
49]. However, there is a scarcity of studies exploring the depth of low-carbon policies, primarily due to the absence of comprehensive databases detailing policy intensity. Consequently, some researchers resort to using binary variables to represent policy intensity, employing the double-difference (DID) methodology for analysis. However, this approach often fails to accurately capture the magnitude of regional policy intensities and frequently encounters challenges related to meeting the common trend assumption. Building on the foundation laid, this study assesses policy intensity through an indicator system crafted using machine learning techniques. This methodology addresses endogeneity issues and provides a more authentic and scientifically rigorous approach, thereby offering novel data and empirical insights into the investigation of policy intensity.
In urban centers, two primary strategies for carbon reduction emerge: one involves an active mechanism focused on scientific and technological innovation and industrial transformation, while the other adopts a passive approach that includes welfare displacement and pollution transference. The former strategy sees cities pioneering new energy sources and improving energy efficiency through scientific breakthroughs and industrial restructuring to foster industrial transformation, particularly toward cleaner energy sources [
27,
50]. Specifically, a heightened policy intensity leads to increased costs for enterprises with significant energy consumption and pollution within urban areas, making their survival and growth challenging. Consequently, these enterprises opt to engage in scientific and technological innovations aimed at improving energy efficiency, reducing energy consumption, and mitigating pollution, thereby adhering to principles of low-carbon development. According to Porter’s hypothesis, appropriate environmental regulation will spur technological innovation, and so it can be inferred that environmental regulations stimulate innovation and progress. Specifically, appropriate environmental regulations can offset the “environmental compliance costs” borne by enterprises, enhance their competitiveness, and facilitate their transition toward low-carbon practices aimed at reducing carbon emissions. Moreover, low-carbon policies are positioned to optimize capital allocation and drive industries toward cleaner production methods. In the implementation of low-carbon policies, local governments often leverage their regional resource endowments and maximize their strengths in alignment with directives from higher tiers of government. For example, within the agricultural sector, considerations extend beyond ecological development to encompass low-carbon agricultural practices. Similarly, within the industrial sector, key energy-intensive industries, such as iron smelting, coal, chemicals, and electric power, must pursue energy-saving technological advancements and adopt low-energy-consumption equipment to achieve low-carbon development through equipment upgrades and technological innovations. Additionally, in the service sector, integrating low-carbon principles into modern service industries, such as finance, food and beverage, tourism, and transportation, is crucial.
The second strategy involves cities enacting stringent low-carbon policies aimed at internalizing the negative externalities of environmental pollution, thereby transforming them into endogenous costs. This approach aims to reduce firm welfare and restrain firm performance. According to the pollution refuge hypothesis, companies in polluting-intensive industries tend to be based in countries or regions with relatively low environmental standards, where firms typically operate to maximize profit. Consequently, such stringent policies incentivize pollution-intensive firms to adopt pollution-shifting strategies [
51], ultimately leading to decreased firm welfare. Specifically, when a firm operates in a region with stringent regulations and high environmental standards, it faces higher environmental regulation costs, such as pollution taxes, compared to firms in less regulated areas. To maximize profitability, these firms may choose to relocate their operations to cities with more favorable regulatory environments to avoid the constraints imposed by environmental regulations. This relocation trend occurs spatially, with firms showing a tendency to move operations to areas with looser regulations, even if it results in increased pollution levels in the new location. This phenomenon supports the “pollution refuge hypothesis”, which suggests that firms seek refuge from strict regulations by moving to less regulated areas, thereby undermining the effectiveness of environmental governance. Moreover, the relocation of pollution by firms increases transfer costs, further impacting their original welfare.
Based on this premise, the study proposes the following research hypotheses:
Hypothesis 1. A greater intensity of low-carbon policies leads to a more significant reduction in carbon emissions.
Hypothesis 2. Intensified low-carbon policies achieve reductions in carbon emissions through technological innovation, industrial transformation, welfare crowding-out, and pollution transfer effects.