5.1. Temporal and Spatial Variations in Carbon Emissions and Climate Legislation
To provide a clearer temporal view of the evolution of carbon emissions and climate laws worldwide, we computed the annual carbon emissions per capita and climate laws from 2002 to 2021. The results are illustrated in
Figure 2.
World per capita carbon emissions increased continuously from 2000 to 2008. Global economic growth, particularly industrialization in developing countries, led to increased carbon emissions, and global per capita carbon emissions declined slightly in 2009. This was due to a slowdown in economic activity as a result of the global financial crisis. Despite continued global economic growth, the increase in per capita carbon emissions slowed from 2010 to 2019. This was partly due to improvements in energy efficiency and the development of renewable energy sources. Global per capita carbon emissions declined due to a reduction in industrial activity, lower transportation, and lower energy demand in the context of the COVID-19 pandemic in 2020. A sharp decline in global economic activity led to a significant drop in per capita carbon emissions. 2021 saw a gradual global economy recovery and a per capita carbon emissions rebound.
Figure 2 also displays the yearly number of climate change laws. In the late 1990s, steady growth started and accelerated national climate action after the Kyoto Protocol 1997. A sharp growth after 2009 may be related to the much-hyped UNFCCC in December 2009 (COP15). The climate change laws and policies peaked in 2009–2017, when over 100 laws were passed yearly. However, the number of climate laws declined more sharply after 2017.
To depict spatial discrepancies in carbon emissions and climate laws, we show the spatial distribution of carbon emissions and climate laws in 2002 and 2021 by utilizing ArcGIS 10.8. The variables data are divided into five distinct categories.
Based on
Figure 3a,b, the temporal analysis from 2002 to 2021 reveals a noticeable increase in per capita carbon emissions, particularly in regions like North America, Europe, and parts of Asia, where emissions were already high in 2002 and further intensified by 2021. This trend is especially pronounced in developing regions, where industrial growth has accelerated, leading to new high-emission areas, notably in parts of Asia such as China and India. Spatially, North America, Europe, and Australia consistently exhibit high per capita carbon emissions, reflecting their intensive energy consumption and industrial activities. In contrast, Sub-Saharan Africa, South Asia, and parts of Southeast Asia remain in the lower emission categories, likely due to lower levels of industrialization.
Figure 4a,b shows a clear increase in the number of climate laws globally from 2002 to 2021. The maps indicate that more countries adopted climate legislation over this period, as reflected in the transition from lighter to darker shades of blue. In 2002, many countries, particularly in Africa, South America, and parts of Asia, had few or no climate laws. However, by 2021, these regions showed substantial progress. This reflects not only a quantitative increase in climate legislation but also a broader global expansion. By 2021, climate legislation had become more widespread, extending beyond developed regions like Europe and North America to include numerous developing countries. Europe remained a leader in climate legislation from 2002 to 2021, with countries such as the United Kingdom, France, and Germany showing substantial increases, resulting in a more robust legislative framework. This analysis provides a foundation for further investigation into the effectiveness of these laws in mitigating the impacts of climate change.
5.3. Econometric Regression Results
Before proceeding with regression analysis, confirming the optimized regression model with the relevant test is important. According to Elhorst [
73], this study first estimates the models excluding the influence of spatial interactions and then carries out the requisite robust LM lag and LM error examinations for each spatial econometric estimation method.
Table 3 displays the outcomes of the estimations for non-spatial panel methods, including pooled OLS, spatial fixed effects, and time fixed effects, as well as combined both spatial fixed effects and time fixed effects. The LM test results and robustness analysis are at the bottom of
Table 3. The LM test results showed that the original hypothesis of no spatially lagged dependent variable could be strongly rejected across all model specifications at the 1% significance level. The original hypothesis of no spatially autocorrelated error factor is strongly refuted at the 1% significance level except for the two-way fixed effects model. Regarding the robustness test outcomes, across all model specifications, the original hypothesis of no spatially lagged dependent variable and the original hypothesis of no spatially autocorrelated error factor are firmly refuted at a 1% significance level. These results indicate the presence of spatial dependence among the data, consistent with the findings of the Moran’s I index. The above spatial autocorrelation analysis confirms the significant spatial correlation between carbon emissions and climate legislation. By establishing a spatial econometric model, this study enables a more precise measurement of climate legislation’s specific role and magnitude in influencing carbon emissions. Moreover, the model provides robust evidence supporting the diffusion of climate policies.
For choosing the most suitable spatial model for optimal fitting, we initially assessed the spatial Durbin model (SDM). The Wald and LR tests were conducted to explore the possibility of simplifying the SDM into either the spatial lag model (SLM) or the spatial error model (SEM). The test results, as shown in
Table 4, rejected the original hypothesis at the 1% level of significance, indicating that the SDM outperformed both the SAR and SEM. Therefore, our analysis of the spatial impact of climate legislation on carbon emissions is conducted based on the SDM. Simultaneously, employing Hausman statistics, we confirmed that the two-way fixed effect is more appropriate for our study. Consequently, the SDM processing two-way fixed effects was ultimately selected for empirical analysis.
According to the results in column (3) of
Table 4, it is important to highlight that the statistical significance of the spatial autocorrelation parameter ρ is observed at the 1% level. This signifies the presence of spatial dependence within the dataset. The outcomes imply that an escalation in carbon emissions among neighboring nations contributes to rising CO
2 emissions within the host country. The CLAW coefficient demonstrated a statistically significant negative effect, suggesting that climate change legislation implemented in a specific country reduces its carbon emissions. This finding verifies hypothesis 1. The coefficients of lnPGDP are positive and strongly significant at the 1% level. The estimated coefficients of its squared term (lnPGDP2) are negative at the 1% level of significance, denoting that there is clear evidence for the EKC hypothesis, i.e., there is a reversed U relationship between GDP per capita and carbon emissions [
74]. At the 1% significance level, the coefficients of lnURB are significantly positive. Due to industrialization and high carbonization in the early stage of urbanization, it is generally believed that the more developed a country’s urbanization is, the higher the per capita CO
2 will be. Therefore, the urbanization process will undoubtedly promote an increase in carbon emissions. However, the coefficient of industrialization was positive and insignificant. As demonstrated in numerous empirical studies by scholars, industrialization is a significant factor contributing to the increase in carbon emissions. However, some researchers have also found that due to industrial optimization and upgrading, there are inhibiting factors that impede the rise in carbon emissions [
75,
76]. Under such dual effects, the positive impact of industrialization on carbon emissions may no longer be statistically significant. The estimated population density coefficient implies that higher population density levels led to an increase in CO
2 emissions throughout the research timeframe. It can be understood as a result of the larger population contributing to greater energy consumption, consequently fostering the production of carbon dioxide emissions. The coefficient of renewables consumption share was significantly negative at the 1% significance level, showing that renewable energy consumption can reduce carbon emissions. Regarding
FDI, the estimated coefficient was significantly positive at the 1% level, which supports the “pollution heaven hypothesis”. The estimated coefficient of the rule of law was positive but statistically insignificant.
Numerous preceding studies concluded at this juncture have assessed spatial spillover’s presence via point estimates. However, according to LeSage and Pace [
71], the estimated coefficients in the SDM are incapable of inherently portraying the marginal impacts of the associated explanatory factors on the dependent variable. Hence, this study subsequently conducted estimations to ascertain the independent variables’ direct, indirect, and cumulative effects, detailed in
Table 5.
Table 5 displays the direct, indirect, and total effects. Direct effects indicate how alterations in explanatory variables impact carbon emissions within a specific country. Indirect effects can be interpreted as the impact of changes in explaining variables of adjacent nations on the carbon emissions of the host nation or as the impact of changes in explaining variables within the host nation on the carbon emissions of adjacent nations. Then, the sum of the direct and indirect impacts is the total effects. In terms of the magnitudes and significance level, the direct impacts are comparable to the coefficients estimated in
Table 4. The magnitude discrepancies between them could be due to the feedback effects. These feedback effects are partly caused by the coefficient of the spatially lagged dependent variable and partly by the coefficient of the explanatory variable’s own spatially lagged value.
The empirical results shown in
Table 5 indicate that, for climate legislation, the total effect coefficient of climate legislation is −0.0188 and statistically significant. It illustrates that a newly passed climate law on its own contributes to a reduction in all countries’ CO
2 emissions per capita by around 1.88%. Further, the direct effect (−0.0049) was significantly negative, indicating that one newly passed climate change law reduced carbon emissions by 0.49% in the domestic country. Climate change legislation plays an important role in regulating and controlling carbon emissions. On the other hand, the spillover effect (−0.0139) was also significantly negative, indicating that CO
2 emissions per capita decreased by 1.39% in local countries for every unit increase in the stock of climate legislation in the neighboring countries. This finding supports Hypothesis 2. That is to say, more climate legislation in surrounding countries will reduce carbon emissions in the local area. The possible reason why a country’s climate legislation has a significant spatial spillover effect is that the dissemination of implicit knowledge is subject to geographic distance [
77]. Under the influence of knowledge dissemination and policy diffusion, the local country gradually imitates and learns the advanced management experience of climate governance to cope with the pressure of international carbon emission reduction.
More importantly, it is evident that the spillover effects surpass the direct effects in terms of magnitude. This outcome implies that the positive impact of a country’s climate legislation on its environmental quality is modest when contrasted with the positive impact of climate legislation in neighboring nations on the local environmental quality. This makes sense since the direct effects focus only on the host nation, whereas the indirect spillover effects consider all the other neighboring nations. And that is why the total effects align with the significance level of the indirect effects. The result also highlights the importance of estimating the impact of climate legislation on CO2 emissions by considering spatial dependence. Based on the spatial dependence between climate legislation and carbon emissions, it can be inferred that the diffusion of climate laws, with the spillover effect, mitigates carbon dioxide emissions.
For the control variables, we first emphasized the relationship between economic development and CO2 emissions. Regarding GDP per capita, the total effect equals 5.0226 and is statistically significant. It shows that a 1% rise in GDP per capita in a country triggers an increase in all countries’ CO2 emissions per capita by approximately 5.0226%. The direct effect of GDP per capita amounts to 2.9579 and is statically significant at a 1% significant level, indicating that a 1% increase in GDP per capita within a country can lead to an approximately 2.9579% rise in its own per capita CO2 emissions. The spatial spillover impact equates to 2.0647 and is significant at the 1% level. This result indicates that when economic development increases by 1% in the local country, it leads to a 2.0647% rise in CO2 emissions within the neighborhoods of the local country. The total effect, direct effect, and indirect effect coefficients of its squared term are −0.2684, −0.1346, and −0.1338, respectively. They are statistically negative and significant at a 1% level. These results imply that the spatial spillover effect also substantiates the EKC hypothesis theory. For the industrial structure, all the effects display statistical insignificance. The direct effect of urbanization is 0.9211 and significant at the 1% level, while its indirect effect is insignificant. The results show that a 1% growth in urbanization in a country triggers an increase in its CO2 emissions per capita by approximately 0.9211%. Population density’s direct effects is 0.4930, and its indirect effect is −0.3631, which are significant at the 1% level. The positive direct effect suggests that a 1% increase in population density within a country directly contributes to a 0.493% increase in carbon emissions per capita. Conversely, the negative indirect effect implies that a 1% increase in population density in neighboring countries dampens the local carbon emissions per capita by 0.3631%. The estimated coefficient for the direct effect of renewables is −0.0046, which is statistically significant at the 5% level. It suggests that a 1% growth in the utilization of renewables can reduce the carbon emissions per capita by 0.0046% within the country. However, its indirect spatial spillover effect is not statistically significant, indicating that the influence of renewables does not extend meaningfully to neighboring countries. The total effect of FDI is estimated at −0.0012, which is statistically significant at the 10% level. This result indicates that an increase of one unit in FDI is associated with an approximate 0.12% reduction in per capita carbon emissions across all countries. The direct effect of FDI is estimated at 0.0008, while the indirect effect is −0.0021, with both effects being statistically significant at the 1% level. This finding implies that a one-unit increase in domestic FDI leads to a 0.08% increase in per capita carbon emissions within the host country. In contrast, the indirect effect of FDI results in a 0.21% reduction in per capita carbon emissions in neighboring countries. For the rule of law, the direct effect is not significant. However, the spillover effect is significant, with a positive value of 0.8518, which implies that an improved legal environment in the local country results in increased emissions for its surrounding countries. One possible reason is that as domestic regulations gain stronger enforcement, highly polluting companies might choose to invest in neighboring countries, aiming to circumvent stringent legal constraints. As a result, this behavior can contribute to an increased carbon emission level in the surrounding nations.
To test Hypothesis 3, we distinguish climate legislation into legislative acts (passed by parliament) and executive orders (issued by governments). The results are presented in
Table 6.
As shown in
Table 6, the total effect of legislative acts is estimated at −0.0755, which is statistically significant at the 1% level. This result indicates that each new legislative act leads to an approximate 7.55% reduction in per capita carbon emissions across all countries. The direct effect is −0.0175, also significant, suggesting that each new legislative act results in a 1.75% decrease in per capita carbon emissions within the implementing country itself. In addition, the indirect effect is −0.0579, which is also significant, implying that adopting new legislative acts in one country contributes to a 5.79% reduction in per capita carbon emissions in neighboring countries. In terms of executive orders, the total effect is estimated at −0.0124 and is statistically significant at the 1% level. This result suggests that each new executive order results in an approximate 1.24% reduction in per capita carbon emissions across the overall sample of countries. The direct effect is −0.0032, indicating that each new executive order leads to a 0.32% decrease in per capita carbon emissions within the implementing country. Meanwhile, the indirect effect is −0.0092, also statistically significant, reflecting a 0.92% reduction in per capita carbon emissions in neighboring countries as a result of the newly passed executive order. As indicated in
Table 6, despite the greater number of executive orders compared to legislative acts (refer to
Figure 2), both the direct and spillover carbon reduction impacts remain inferior to those of legislative acts. Hypothesis 3 was verified. This conclusion aligns with the findings of Eskander and Fankhauser [
7], who argue that legislative acts have a higher capacity to decrease emissions due to a substantial portion of them being primarily focused on aspirational objectives.