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Article

Economic Freedom, Education and CO2 Emissions: A Causality Analysis for EU Member States

1
Department of Educational Sciences, Hasan Ali Yucel Faculty of Education, İstanbul University-Cerrahpaşa, İstanbul 34500, Türkiye
2
Department of Public Finance, Bandirma Onyedi Eylul University, Bandirma-Balikesir 10200, Türkiye
3
Department of Economics, Plekhanov Russian University of Economics (PRUE), 117997 Moscow, Russia
4
Department of Economics, Financial University under the Government of the Russian Federation, 125167 Moscow, Russia
5
Department of Industrial Engineering, Istanbul University-Cerrahpasa, İstanbul 34500, Türkiye
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(13), 8061; https://doi.org/10.3390/ijerph19138061
Submission received: 5 May 2022 / Revised: 19 June 2022 / Accepted: 28 June 2022 / Published: 30 June 2022
(This article belongs to the Special Issue Circular Economy and Green Environment)

Abstract

:
Environmental sustainability is one of three pillars of sustainability. However, a significant worldwide deterioration in the environment has been experienced since the Industrial Revolution, but the efforts to protect the environment date back to the 1970s. In this context, many economic and non-economic factors underlying environmental degradation have been investigated until today, but the influence of economic freedom indicators and education on the environment have been relatively less analyzed and the researchers have mainly focused on the influence of economic and institutional variables on the environment. Therefore, this paper investigates the reciprocal interplay among economic freedom indicators, education, and environment in EU member states over the 2000–2018 term by using a causality test with cross-sectional dependency and heterogeneity and taking the research gap into consideration. The causality analysis indicates that market-oriented economic structure and education can be beneficial in combatting environmental degradation.

1. Introduction

Environmental degradation has been one of the most serious worldwide threats that societies have faced for a long time. The atmospheric degradation, land and soil degradation, water degradation, and other types of pollution negatively affect many economic and social variables such as human health, biodiversity, climate change, disasters, and sustainable development [1,2,3]. Therefore, many goals related to the environment, including affordable and clean energy, sustainable cities and communities, clean water and sanitation, responsible consumption and production, climate action, and life on land and below water are among the 17 UN (United Nations) sustainable development goals given its wide vital implications for all living species [4].
The world has continued to experience environmental problems such as air and water pollution, climate change, disasters, and drought mainly resulting from the environmental degradation despite national, regional, and international struggles such as the Vienna Convention for the Protection of the Ozone Layer (1985), Kyoto Protocol (1997), and the Paris Agreement (2015). However, the CO2 emissions (metric tons per capita) have also increased to 4.5 in 2018 from 3.8 in 2000 but are substantially different between developing and developed countries [5]. Furthermore, the largest source of CO2 emissions is the consumption of fossil fuels, and energy-related CO2 emissions reached 36.3 billion tons in 2021, the highest ever level in the world [6]. The environmental indicators show that environmental degradation has continued to be a serious threat to the world.
The institutional, social, and economic factors underlying environmental degradation have been also explored by researchers in parallel with the international environmental collaborations and the studies have revealed GDP, GDP per capita, sectoral composition, urbanization, financial development, tourism, trade liberalization, FDI inflows, environmental taxes, renewable energy use, energy efficiency, circular economy, recycling, population growth, deforestation, public governance, economic and financial regulations, and the legal system as potential determinants of environmental sustainability [7,8,9,10,11,12,13,14]. In this study, the influence of economic freedom indicators and education on CO2 emissions is investigated by taking the research gap in the related empirical literature into consideration.
Economic freedom is defined as the ability of persons to make their own economic decisions without being exposed to intervention or limitations by government or government-supported powerful groups [15]. The main components of economic freedom are personal choice, voluntary exchange through markets, free market entry and freedom to compete in markets, and protection of property rights [16]. In sum, governments ensure an environment with the above-mentioned characteristics through institutions and regulations and provide a limited number of public goods such as infrastructure and national defense, and economic transactions are mainly implemented in the context of the free market mechanism. The countries have economic structures with different levels of economic freedom in the world. Therefore, the effect of economic freedom on economic growth and development has been widely researched in the related literature and a positive effect of market-oriented economic structures on economic growth and development has been mainly revealed [17,18,19,20].
However, economic freedom can influence environmental quality through diverse channels. One view suggests that a larger government size probably decreases the environmental quality through inefficient operations by government and state-owned enterprises [21,22]. Another view suggests that governments are crucial actors in the design and application of environmental regulations, clean energy, and green products and, in turn, can positively influence the environmental quality [23]. Furthermore, higher economic freedom can decrease the environment quality due to the use of more energy and natural resources, considering its positive growth effect depends on the economic development levels of the countries in the context of the EKC (Environmental Kuznets Curve) hypothesis [24]. However, many efficient resources can also be used to control the environment in countries with higher economic freedom and, in turn, developments in energy-efficient technologies and renewable energy production can raise the environmental quality [20]. Lastly, countries with higher economic freedom levels can efficiently use market-based instruments such as environmental taxes and tradable permit systems to improve the environmental quality. As a consequence, the impact of economic freedom and government size on the environment varies based on which channels are dominant.
The freedom of international trade or trade openness can also affect the environmental quality through diverse channels. First, the positive growth effect of trade openness can influence the environmental quality depending on the economic development levels of the countries in the context of the EKC hypothesis [25,26,27]. Secondly, trade openness can improve the environmental quality by easing the countries to reach cleaner and energy-efficient technologies and renewable energy [22,28]. Thirdly, trade liberalization can change the industry composition and influence the environmental quality based on their factor endowments [25]. As a result, the impact of international trade freedom on the environment changes depending on which channels are dominant. Economic freedom, government size, and freedom of international trade can affect the environment through various channels, but a deteriorated environment can also direct the countries to improve the environment through market-based solutions. Therefore, a mutual interplay between economic freedom indicators and the environment can exist in theoretical terms.
Education can contribute to environmental quality by raising environmental awareness and developing green and energy-efficient technologies and renewable energy production [29,30]. However, education can negatively influence the environmental quality by fostering economic growth through human capital, innovation, competitiveness, and entrepreneurship depending on the economic development levels of the countries in the context of the EKC hypothesis. On the other hand, governments can use education as an instrument in combatting environmental degradation. Similarly, a mutual interplay between education and the environment can exist theoretically.
Consequentially, economic freedom and its components of government size and freedom to international freedom, and education are expected to affect environmental sustainability. This article investigates the causal interplay among economic freedom indicators, education, and the environment proxied by CO2 emissions in a sample of the European Union (EU) economies. The EU environment policy goes back to the European Council meeting of 1972 in Paris, which suggested a common environment policy for the EU, and then The Single European Act of 1987 included an ‘Environment Title’, the first legal foundation for the EU common environment policy. The Treaty of Maastricht (1993) also accepted the environment as a formal EU policy area and combatting climate change became a specific goal of the EU with the Treaty of Lisbon (2009) [31]. The precaution, prevention, and rectification of pollution at the source and polluter fines are the main principles of the EU environment policy [31]. The EU targets a 55% decline in greenhouse gas emissions by 2030 compared to 1990 levels and to become the first climate-neutral continent by 2050 [32]. The figures indicated that greenhouse gas emissions decreased by 31% in the EU between 1990–2020 [33] and verified the success of the EU environment policies.
The researchers have analyzed the effect of many variables including GDP, GDP per capita, sectoral composition, urbanization, financial development, tourism, trade liberalization, FDI inflows, environmental taxes, renewable energy use, energy efficiency, circular economy, recycling, population growth, deforestation, public governance, economic and financial regulations, and legal system on the environment [7,8,9,10,11,12,13,14], but education and economic systems of a country are also very important for the environment because both education and economic freedom have an effect on the environment directly or indirectly through these variables. However, the interaction among education, economic freedom, and the environment has not been sufficiently investigated yet. Therefore, this research purposes to contribute to environmental economics by investigating the effect of economic freedom, its components, and education on the environment. Another contribution of the paper is to analyze the causal interaction among education, economic freedom, and CO2 emissions at a country level because the limited literature about the interplay of economic freedom, education, and environment has mainly utilized the regression approach and therefore reached one coefficient for all countries in the panel. Furthermore, the researchers have mainly analyzed the effect of institutional, social, and economic variables on the environment and have not investigated the impact of the environment on economic, social, and institutional variables. Therefore, another novelty of the article is to analyze the reciprocal interplay between education, economic freedom indicators, and CO2 emissions. The next section of the research reviews and sums up the literature and variables and study methods are described in Section 3. The causality analysis is performed and its findings are discussed in Section 4. The article eventuates in the Conclusion section.

2. Literature Review

Environmental sustainability has come into prominence in the world as of the 1970s and, in turn, precautions for environmental protection have begun to be seriously discussed at the national and international levels. In this context, researchers have also analyzed the relationship between a great number of institutional, economic, and social variables and the environment and many of them have been suggested as the determinants of environmental sustainability. In this study, we analyze the reciprocal interplay between economic freedom indicators, education, and CO2 emissions through the research gap in the related literature.
The limited empirical literature on the nexus between economic freedom and the environment has generally utilized the regression approach and found mixed findings. Odugbesan et al. [14], Cheon et al. [34], Adesina and Mwamba [35], Bjørnskov [36], and Jain and Kaur [37] discovered a negative influence of economic freedom indicators on CO2 emissions, but Wood and Herzog [38], Rapsikevicius et al. [39], Chen [24], and Alola et al. [40] have revealed mixed findings on the influence of economic freedom indicators on CO2 emissions.
Odugbesan et al. [14] analyzed the determinants of the green economy in Turkey for the period of 1996–2019 through time series analysis and revealed that economic freedom is a significant determinant of carbon productivity in the short and long run. On the other hand, Cheon et al. [34] investigated the effect of economic freedom on CO2 emissions in 111 countries over the 2005–2013 period through a regression approach and revealed a negative influence of the economic freedom index on CO2 emissions. Adesina and Mwamba [35] analyzed the effect of economic freedom indicators (business freedom index, fiscal freedom index, trade freedom index, and freedom from corruption index) on CO2 emissions in 24 African economies over the 1995–2013 term via a dynamic regression approach and discovered a negative effect of economic freedom indicators on CO2 emissions.
Bjørnskov [36] investigated the influence of economic freedom on greenhouse gas emissions in 105 economies with five-year periods for the 1975–2015 period via a regression approach and uncovered that economic freedom decreased the greenhouse gas emissions, but slid the maximum point of the EKC curve to the left. On the other hand, Jain and Kaur [37] examined the effect of economic freedom indicators of government size and law and order on CO2 emissions in Asian economies over the 1981–2016 period through a dynamic regression approach and pointed out that a higher government size index (or more market-oriented economies) and higher law and order decreased CO2 emissions.
Wood and Herzog [38] investigated the interaction between economic freedom indicators and air quality represented by CO2 emissions and concentrations of fine particulate matter in 105 countries for the 2000–2010 period and found that a 1% increase in the economic freedom index decreased concentrations of fine particulate matter by 7.15% in the long-term, but did not find a significant interaction between economic freedom and CO2 emissions. On the other hand, Rapsikevicius et al. [39] analyzed the effect of 10 economic freedom indicators on environmental performance in 23 European economies over 2005–2018 duration by means of correlation analysis, index calculation, clustering, trend analysis and reached mixed findings between economic freedom indicators and environmental performance indicators.
Chen [24] investigated the effect of government size in BRICS economies for the 1990–2018 period by means of the ARDL approach and discovered a positive effect of government size on CO2 emissions in Brazil, China, India, and South Africa in short and long-term, but a negative long-term effect of government size on CO2 emissions in Russia. Alola et al. [40] also analyzed the effect of economic freedom indicators of law and order, freedom to trade internationally, regulation, and sound money on the ecological footprint in G-20 countries for the period of 2000–2016 through a dynamic regression approach and found that economic freedom indicators negatively influenced the environmental quality of the countries under consideration.
The empirical studies on the nexus between education and CO2 emissions have stayed inconclusive in line with the theoretical considerations. Duarte et al. [41], Uddin [29], Wang et al. [42], Li and Ullah [43] revealed a decreasing effect of education on CO2 emissions, but Li and Zhou [44] and Zafar et al. [45] discovered an increasing effect of education on CO2 emissions. Furthermore, Khan [46] and Cui et al. [47] reached findings incompatible with the EKC hypothesis.
Duarte et al. [41] explored the factors underlying CO2 emissions in Spanish households and discovered that higher education levels decreased the CO2 emissions. On the other hand, Uddin [29] investigated the effect of education on CO2 emissions in Bangladesh for the 1974–2010 period with cointegration analysis and pointed out that education decreased the CO2 emissions by increasing the environmental awareness. Wang et al. [42] also analyzed the influence of education on environmental attitudes in China employing data from the Chinese General Social Survey of 2010 version and revealed that education fostered pro-environmental behaviors, but the impact of education on environmental behaviors was heterogeneous among the persons. Li and Ullah [43] analyzed the influence of education on CO2 emissions in BRICS economies for the 1991–2019 period via the NARDL approach and unveiled that improvements in education decreased the CO2 emissions.
Li and Zhou [44] explored the relationship among demographic characteristics, higher education, and CO2 emissions in China via fully modified ordinary least squares and disclosed a positive effect of higher education on CO2 emissions in East China. Zafar et al. [45] also explored the factors underlying CO2 emissions in 22 top remittance-receiving countries for 1986–2017 via Westerlund and Edgerton cointegration test and discovered a positive influence of education on CO2 emissions.
Khan [46] analyzed the effect of education on CO2 emissions in 122 countries for 1980–2014 via threshold regulation and discovered an inverted U-shaped interaction between education and CO2 emission. Cui et al. [47] also researched the influence of education on CO2 emissions in China for 1991–2019 via the ARDL approach and disclosed an inverted U-shaped interaction between educational indicators and CO2 emissions. Balaguer and Cantavella [48] analyzed the relationship between education and the environment in Australia for the 1950–2014 period and uncovered the findings in favor of the EKC hypothesis. Subramaniam and Masron [49] analyzed the effect of education on the environment in 22 developing countries for 1990–2016 via the ARDL approach and disclosed that the positive effect of poverty on environmental degradation can decrease after a certain threshold of educational attainment. Furthermore, some researchers have investigated the relationship between human capital highly dependent on education and CO2 emissions and found mixed findings [50,51,52,53,54,55] similar to the literature.
Based on the presented literature research, the research hypotheses of the study are:
Hypothesis 1.
There is significant causality between economic freedom and CO2 emissions.
Hypothesis 2.
There is significant causality between government size and CO2 emissions.
Hypothesis 3.
There is significant causality between international trade freedom and CO2 emissions.
Hypothesis 4.
There is significant causality between education and CO2 emissions.

3. Data and Methodology

The causal interplay between economic freedom, government size, freedom to international trade, education, and environment is analyzed in a sample of the EU member states over the 2000–2018 term. The environment (CO) is substituted by CO2 emissions (metric tons per capita). On the other hand, economic freedom is proxied by the economic freedom index (EF), government size (GOV), and international trade freedom (ITF). The government size (GOV) shows the degree of the political process in the allocation of resources, goods, and services. The government size index gets valued between 0 and 10 and higher scores reflect that a country depends on personal choice and markets rather than political decision-making processes. The index of international trade freedom (ITF) is an indicator of trade liberalization and gets valued between 0 and 10 and higher scores reflect that a country has relatively lower restrictions on international trade (see Fraser Institute [56]) for more information about the methodology of economic freedom and its subcomponents). Education (EDU) is substituted by tertiary school enrollment (rate of total tertiary enrollment to the number of individuals officially corresponding to the tertiary education level). The data on CO2 emissions and education are procured from World Bank [5,57] and the indicators of economic freedom are procured from Fraser Institute [56]. All series are yearly and their period is 2000–2018 because the yearly indicators of economic freedom are available as of 2000 and the CO2 emissions end in 2018. The econometric tests are conducted by means of EViews 11.0, and Stata 16.0. The sample includes 24 EU members (Belgium, Bulgaria, Croatia, Cyprus, Czechia, Denmark, Estonia, Finland, France, Greece, Hungary, Ireland, Italy, Latvia, Lithuania, Malta, Netherlands, Poland, Portugal, Romania, Slovakia, Slovenia, Spain, and Sweden) except Austria, Germany, and Luxembourg due to absence of education data.
The descriptive characteristics of the series are shown in Table 1. The mean of CO2 as metric tons per capita is 7.6895 and the mean of tertiary school enrollment is 64.1684% in the sample, but both variables substantially vary among the countries. However, the mean economic freedom index, government size index, and index of freedom to international trade are, respectively, 7.6141, 5.9805, and 8.3420, and the economic freedom index and its components are relatively more stable among the countries.
The causal interplay between indicators of economic freedom, education, and CO2 emissions is investigated with Emirmahmutoglu and Kose [58] causality test. The test improves the LA-VAR (lag-augmented vector autoregression) approach of Toda and Yamamoto depending upon meta-analysis for causality analysis between two variables in heterogeneous panel datasets. This test regards the level VAR model with L i + d m a x i [58]:
y i , t = δ 1 i + l = 1 L i + d m a x i α 1 i , l y i , t l + l = 1 L i + d m a x i β 1 i , l x i , t l + ε 1 i , t
x i , t = δ 2 i + l = 1 L i + d m a x i α 2 i , l y i , t l + l = 1 L i + d m a x i β 2 i , l x i , t l + ε 2 i , t
i (i = 1,2,…,N) indicates the cross-sections, t (t = 1,2,…,T) indicates the time dimension of the series. L i is the lag structure and may vary among the cross-sections, d m a x i is maximum integration level and ε 1 i , t and ε 2 i , t are error terms.
The null hypothesis for Equation (1) suggests that x i , t is not Granger cause of y i , t for all cross-sections. Similarly, the null hypothesis for Equation (2) suggests that y i , t is not Granger cause of x i , t for all cross-sections.

4. Results and Discussion

In the empirical analysis, cross-sectional dependency and heterogeneity properties of the series are firstly investigated by means of LM, LM CD, LMadj., and delta tests, and the test consequences are reported in Table 2. The probability values of cross-sectional dependence tests (LM, LM CD, and LMadj.) are lower than 1%. Therefore, the null hypothesis (absence of cross-sectional dependence) is denied and the subsistence of cross-sectional dependence between series is found. The findings of cross-sectional dependence tests indicate that indicators of economic freedom, education, and CO2 emissions in one of the EU countries may influence the other EU member countries thanks to the EU and highly integrated world. On the other hand, the probability values of homogeneity tests are also found to be lower than 1%. As a consequence, the null hypothesis (absence of heterogeneity) is denied and the subsistence of heterogeneity is revealed. In other words, panel estimates include country-specific heterogeneity.
The maximum integration level of the variables should be determined before the application of the causality test. Therefore, the integration level of the series is analyzed using the Cross-Sectionally augmented Im–Pesaran–Shin (IPS) [59] (CIPS) test developed by Pesaran [60] thanks to cross-sectional dependency between the five series. The test findings are shown in Table 3 and, in turn, the null hypothesis (presence of a unit root) is accepted for the level values of the variables because test statistics are revealed to be lower than the critical values presented in Pesaran [60]. However, the null hypothesis is denied for the first differences of the series. In conclusion, test findings indicate that CO, EF, GOV, ITF, and EDU are I (1) and the maximum integration level is specified as 1.
In the causality analysis, the causal interplay between economic freedom (EF) and CO2 emissions (CO) is firstly examined with the bootstrap causality method thanks to the subsistence of cross-sectional dependence and heterogeneity, and the results are reported in Table 4. The causality findings reveal a mutual interplay between economic freedom and CO2 emissions at the panel level and in Denmark and Portugal but a one-way causal effect from EF to CO in Czechia, Ireland, Romania, and Spain and a one-way causal effect from CO to EF in Cyprus, Finland, and Greece.
A reciprocal interaction between economic freedom and CO2 emissions is theoretically expected and the panel-level causality analysis uncovers a bidirectional causality between economic freedom and CO2 emissions in line with the theoretical expectations. However, country-level causality analysis reveals a mutual interplay between economic freedom and CO2 emissions in Denmark and Portugal, but one-way causal effect from economic freedom to CO2 emissions in Czechia, Ireland, Romania, and Spain and a one-way causal effect from CO2 emissions to economic freedom in Cyprus, Finland, and Greece. Economic freedom can affect the environment through relatively more efficient allocation of resources, market-based environmental instruments, and economic growth channels. On the other side, the significant environmental degradation also can lead the countries to make the market-oriented structural reforms. The differences in country-level causality analysis can result from country-specific characteristics such as current economic development level and economic structures. In the related limited empirical literature, Rapsikevicius et al. [39] have reached mixed findings on the interaction between economic freedom indicators and environmental performance indicators for 23 European economies. On the other hand, Odugbesan et al. [14] discovered a positive effect of economic freedom on carbon productivity for Turkey. Cheon et al. [34], Adesina and Mwamba [35], Bjørnskov [36], Jain and Kaur [37], and Wood and Herzog [38] revealed a negative influence of economic freedom on CO2 emissions for different country groups through panel regression analysis. In this context, our findings are in accord with the related empirical literature.
The causal interplay between government size (GOV) and CO2 emissions (CO) is examined with the bootstrap causality method and the results are reported in Table 5. The causality findings reveal a mutual interplay between two variables at the panel level and in Italy, Malta, and Spain, but a one-way causal effect from GOV to CO in Cyprus, Czechia, Ireland, Slovenia, and Sweden and a one-way causal effect from CO to GOV in Bulgaria, Estonia, and Greece.
The two-way interaction between government size and CO2 emissions by causality analysis is revealed to be compatible with theoretical expectations because the government is a dominant factor in the design, application, and control of environmental and economic policies and encouraging clean energy and green products. On the other hand, governments can change the structure of the government sector to combat environmental degradation. However, country-level causality analysis reveals a mutual interplay between government size and CO2 emissions in Italy, Malta, and Spain, but unidirectional causality from government size to CO2 emissions in Cyprus, Czechia, Ireland, Slovenia, and Sweden and a unilateral causality from CO2 emissions to government size in Bulgaria, Estonia, and Greece. The differences in the findings of the country-level causality analysis can result from government sector characteristics and national regulatory framework. In the related empirical literature, a few scholars have analyzed the interaction between government size and CO2 emissions. In this context, Jain and Kaur [37] reveal that higher government size (or more market-oriented economies) decrease the CO2 emissions in Asian economies, but Chen [24] discovers a positive effect of government size on CO2 emissions in Brazil, China, India, and South Africa in the short and long term and a negative long-term effect of government size on CO2 emissions in Russia. So, the empirical findings suggest that government size matters for CO2 emissions for different countries, and our findings are mainly in line with the limited empirical findings.
The causal interplay between freedom to international trade (ITF) and CO2 emissions (CO) is examined with the bootstrap causality method and the results are reported in Table 6. The causality findings reveal a one-way causal effect from ITF to CO at the panel level, and in Croatia, Hungary, Italy, and Sweden, a bilateral interplay between two series in France and Spain, and a one-way causal effect from CO to ITF only in Denmark.
The unidirectional causality from international trade freedom to CO2 emissions by panel-level causality analysis is in line with the theoretical expectations because trade freedom or trade liberalization can influence the environment by enhancing the economic growth, changing the industry composition, and making it easy for the countries to reach cleaner or energy-efficient technologies and renewable energy. Furthermore, the country-level analysis reveals a bidirectional causality between international trade freedom and CO2 emissions in France and Spain; a unidirectional causality from international trade freedom to CO2 emissions in Croatia, Hungary, Italy, and Sweden; and a unilateral causality from CO2 emissions to international trade freedom. In the related empirical literature, Adesina and Mwamba [35] revealed a negative effect of the trade freedom index on CO2 emissions in 24 African economies. Alola et al. [40] reached similar findings for G-20 countries. Therefore, our findings and the related empirical literature point out that international trade freedom is a significant determinant of CO2 emissions for developing and developed countries.
The causal interplay between education (EDU) and CO2 emissions (CO) is examined with the bootstrap causality method and the results are reported in Table 7. The causality findings revealed a mutual interplay between two series at the panel level and in Croatia, and one-way causal effect from EDU to CO in Italy, Netherlands, Poland, Portugal, Spain, and Sweden and a one-way causal effect from CO to EDU only in Belgium, Denmark, Ireland, and Latvia.
Education is theoretically expected to influence the environmental quality by enhancing the economic growth and development, raising the environmental awareness, and developing green and energy-efficient technologies and renewable energy production. Therefore, the findings of panel-level and country causality analyses mainly support the theoretical expectations. Furthermore, the related empirical literature has generally found a significant influence of education on the environment [29,41,42,43,44,45,46,47]. Consequently, education is one of the crucial instruments to improve environmental quality.

5. Conclusions

Environmental degradation is one of the critical problems of the globalized world. The implications of a degraded environment such as climate change, air and water pollution, drought, and loss of biodiversity have been experienced in every part of the world and have become a serious threat to the environment and economic sustainability. Therefore, economic and non-economic determinants of environmental degradation have been intensely explored by researchers. However, the impact of economic freedom and education, which can affect all other significant determinants of environmental degradation, on the environment has not been explored sufficiently. Furthermore, the studies analyzing the interaction between economic freedom and the environment have generally conducted one-way panel analyses, in other words, studied the impact of economic freedom indicators on the environment, and disregarded the country-specific characteristics. Therefore, this study investigates the reciprocal interaction between economic freedom indicators, education, and CO2 emissions by means of the bootstrap Granger causality test with cross-sectional dependency and heterogeneity in a sample of the EU members that have been successful in improving environmental sustainability, to make a contribution to the related literature.
Both panel and country-level causality analyses point out that economic freedom, government size, international trade freedom, and education are significant determinants of environmental degradation proxied by CO2 emissions, although country-level findings partially differ depending on country-specific characteristics in line with the theoretical expectations. Therefore, reforms toward market-oriented economic structures and education can be used effectively to combat environmental degradation by using market-based environmental instruments, raising environmental awareness, and developing green or energy-efficient technologies. Future studies can be conducted on the interaction between economic freedom and the development of green or energy-efficient technologies.

Author Contributions

Conceptualization, G.S., Y.B., M.D. and F.H.S.; methodology, G.S., Y.B., M.D. and F.H.S.; formal analysis, G.S., Y.B., M.D. and F.H.S.; data curation, Y.B. and F.H.S.; writing—original draft preparation, G.S., Y.B., M.D. and F.H.S.; writing—review and editing, G.S., Y.B., M.D. and F.H.S.; supervision, G.S. and Y.B. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data were obtained from the databases of the World Bank and Fraser Institute through the following links: https://data.worldbank.org/indicator/EN.ATM.CO2E.PC (accessed on 25 February 2022); https://data.worldbank.org/indicator/SE.TER.ENRR (accessed on 25 February 2022); https://www.fraserinstitute.org/economic-freedom/dataset?geozone=world&page=dataset (accessed on 11 March 2022).

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Donohoe, M. Causes and Health Consequences of Environmental Degradation and Social Injustice. Soc. Sci. Med. 2003, 56, 573–587. [Google Scholar] [CrossRef] [Green Version]
  2. Qi, Y.; Bhunia, P.; Zhang, T.C.; Luo, F.; Lin, P.; Chen, Y. Environmental Degradation and Sustainability. In Sustainability: Fundamentals and Applications; Surampalli, R., Zhang, T., Goyal, M.K., Brar, S., Tyagi, R., Eds.; John Wiley & Sons, Ltd.: Hoboken, NJ, USA, 2020. [Google Scholar] [CrossRef]
  3. Mumtaz, A.; Rehman, E.; Rehman, S.; Hussain, I. Impact of Environmental Degradation on Human Health: An Assessment Using Multicriteria Decision Making. Front. Public Health 2022, 9, 812743. [Google Scholar] [CrossRef] [PubMed]
  4. UN. The 17 Goals 2022. Available online: https://sdgs.un.org/goals (accessed on 7 March 2022).
  5. World Bank. CO2 Emissions (Metric Tons per Capita) 2022. Available online: https://data.worldbank.org/indicator/EN.ATM.CO2E.PC (accessed on 25 February 2022).
  6. IEA. Global CO2 Emissions Rebounded to Their Highest Level in History in 2021. 2022. Available online: https://www.iea.org/news/global-co2-emissions-rebounded-to-their-highest-level-in-history-in-2021 (accessed on 25 February 2022).
  7. Zheng, H.; Hu, J.; Guan, R.; Wang, S. Examining Determinants of CO2 Emissions in 73 Cities in China. Sustainability 2016, 8, 1296. [Google Scholar] [CrossRef]
  8. Omri, A.; Euchi, J.; Hasaballah, A.H.; Al-Tit, A. Determinants of Environmental Sustainability: Evidence from Saudi Arabia. Sci. Total Environ. 2019, 657, 1592–1601. [Google Scholar] [CrossRef] [PubMed]
  9. Khan, S.A.R.; Yu, Z.; Sharif, A.; Golpîra, H. Determinants of Economic Growth and Environmental Sustainability in South Asian Association for Regional Cooperation: Evidence from Panel ARDL. Environ. Sci. Pollut. Res. 2020, 27, 45675–45687. [Google Scholar] [CrossRef] [PubMed]
  10. Andlib, Z.; Salcedo-Castro, J. The Impacts of Tourism and Governance on CO2 Emissions in Selected South Asian Countries. Etikonomi 2021, 20, 385–396. [Google Scholar] [CrossRef]
  11. Tu, Z.; Feng, C.; Zhao, X. Revisiting Energy Efficiency and Energy Related CO2 Emissions: Evidence from RCEP Economies. Econ. Res.-Ekon. Istraživanja 2022. [Google Scholar] [CrossRef]
  12. Vukovic, N.; Pobedinsky, V.; Mityagin, S.; Drozhzhin, A.; Mingaleva, Z. A Study on Green Economy Indicators and Modeling: Russian Context. Sustainability 2019, 11, 4629. [Google Scholar] [CrossRef] [Green Version]
  13. Tarkhanova, E.A.; Chizhevskaya, E.L.; Fricler, A.V.; Baburina, N.; Firtseva, S.V.A. Green Economy in Russia: The Investments’ Review, Indicators of Growth and Development Prospects. Entrep. Sustain. Issues 2020, 8, 649–661. [Google Scholar] [CrossRef]
  14. Odugbesan, J.A.; Rjoub, H.; Ifediora, C.U.; Iloka, C.B. Do Financial Regulations Matters for Sustainable Green Economy: Evidence from Turkey. Environ. Sci. Pollut. Res. 2021, 28, 56642–56657. [Google Scholar] [CrossRef]
  15. McMahon, F. Economic Freedom (Fraser Institute and Heritage Foundation). In Encyclopedia of Quality of Life and Well-Being Research; Michalos, A.C., Ed.; Springer: Dordrecht, The Netherland, 2014. [Google Scholar] [CrossRef]
  16. Fraser Institute Economic Freedom Basics. 2022. Available online: https://www.fraserinstitute.org/economic-freedom/economic-freedom-basics (accessed on 9 June 2022).
  17. Tran, D.V. A Study on the Impact of Economic Freedom on Economic Growth in ASEAN Countries. Bus. Econ. Horiz. 2019, 15, 423–449. [Google Scholar] [CrossRef]
  18. Brkić, I.; Gradojević, N.; Ignjatijević, S. The Impact of Economic Freedom on Economic Growth? New European Dynamic Panel Evidence. J. Risk Financ. Manag. 2020, 13, 26. [Google Scholar] [CrossRef] [Green Version]
  19. Tas, C.; Uluspy, V. Economic Freedom and Endogenous Economic Growth. J. TESAM Acad. 2021, 8, 265–296. [Google Scholar] [CrossRef]
  20. Mahmood, M.T.; Shahab, S.; Shahbaz, M. The Relevance of Economic Freedom for Energy, Environment, and Economic Growth in Asia-Pacific Region. Environ. Sci. Pollut. Res. 2022, 29, 5396–5405. [Google Scholar] [CrossRef]
  21. Islam, A.M.; López, R.E. Government Spending and Air Pollution in the US. Int. Rev. Environ. Resour. Econ. 2014, 8, 139–189. [Google Scholar] [CrossRef]
  22. Ullah, S.; Apergis, N.; Usman, A.; Chishti, M.Z. Asymmetric Effects of Inflation Instability and GDP Growth Volatility on Environmental Quality in Pakistan. Environ. Sci. Pollut. Res. 2020, 27, 31892–31904. [Google Scholar] [CrossRef]
  23. Kulin, J.; Johansson Sevä, I. The Role of Government in Protecting the Environment: Quality of Government and the Translation of Normative Views about Government Responsibility into Spending Preferences. Int. J. Sociol. 2019, 49, 110–129. [Google Scholar] [CrossRef] [Green Version]
  24. Chen, L. How CO2 Emissions Respond to Changes in Government Size and Level of Digitalization? Evidence from the BRICS Countries. Environ. Sci. Pollut. Res. 2022, 29, 457–467. [Google Scholar] [CrossRef]
  25. Antweiler, W.; Copeland, B.; Taylor, M.S. Is Free Trade Good for the Environment? Am. Econ. Rev. 2001, 91, 877–908. [Google Scholar] [CrossRef] [Green Version]
  26. Capolupo, R.; Celi, G. Openness and Economic Growth: A Comparative Study of Alternative Trading Regimes. Économie Int. 2008, 116, 5–35. [Google Scholar] [CrossRef]
  27. Nguyen, M.L.T.; Bui, T.N. Trade Openness and Economic Growth: A Study on ASEAN-6. Economies 2021, 9, 113. [Google Scholar] [CrossRef]
  28. Amoah, A.; Kwablah, E.; Korle, K.; Offei, D. Renewable Energy Consumption in Africa: The Role of Economic Well-being and Economic Freedom. Energy Sustain. Soc. 2020, 10, 32. [Google Scholar] [CrossRef]
  29. Uddin, M.M. Causal Relationship between Education, Carbon Dioxide (CO2) Emission and Economic Growth in Bangladesh. Glob. J. Hum.-Soc. Sci. E Econ. 2014, 19, 60–67. [Google Scholar] [CrossRef]
  30. Khattak, S.I.; Ahmad, M.; Khan, Z.U.; Khan, A. Exploring the Impact of Innovation, Renewable Energy Consumption, and Income on CO2 Emissions: New Evidence from the BRICS Economies. Environ. Sci. Pollut. Res. 2020, 27, 13866–13881. [Google Scholar] [CrossRef]
  31. European Parliament. Environment Policy: General Principles and Basic Framework 2021. Available online: https://www.europarl.europa.eu/factsheets/en/sheet/71/environment-policy-general-principles-and-basic-framework#:~:text=European%20environment%20policy%20rests%20on,all%20areas%20of%20environment%20policy (accessed on 11 March 2022).
  32. European Commission. 2030 Climate Target Plan 2022. Available online: https://ec.europa.eu/clima/eu-action/european-green-deal/2030-climate-target-plan_en#:~:text=With%20the%202030%20Climate%20Target,below%201990%20levels%20by%202030 (accessed on 11 March 2022).
  33. European Environment Agency. Total Greenhouse Gas Emission Trends and Projections in Europe 2021. Available online: https://www.eea.europa.eu/ims/total-greenhouse-gas-emission-trends (accessed on 11 March 2022).
  34. Cheon, S.; Kim, J.; Kim, J. An Analysis on the Influence of Economic Freedom Index, Renewable Energy Generation Ratio, Energy Consumption and GDP on CO2 Emission. J. Korean Soc. Miner. Energy Resour. Eng. 2017, 54, 242–252. [Google Scholar] [CrossRef]
  35. Adesina, K.S.; Mwamba, J.W.M. Does Economic Freedom matter for CO2 Emissions? Lessons from Africa. J. Dev. Areas 2019, 53, 155–167. [Google Scholar] [CrossRef]
  36. Bjørnskov, C. Economic Freedom and the CO2 Kuznets Curve. IFN Working Paper 2020, No. 1331. Available online: https://www.ifn.se/en/publications/working-papers/2020/1331/ (accessed on 13 March 2022).
  37. Jain, M.; Kaur, S. Carbon Emissions, Inequalities and Economic Freedom: An Empirical Investigation in Selected South Asian Economies. Int. J. Soc. Econ. 2022. Epub ahead of printing. [Google Scholar] [CrossRef]
  38. Wood, J.; Herzog, I. Economic Freedom and Air Quality 2014. Available online: https://www.fraserinstitute.org/sites/default/files/economic-freedom-and-air-quality.pdf (accessed on 14 March 2022).
  39. Rapsikevicius, J.; Bruneckiene, J.; Lukauskas, M.; Mikalonis, S. The Impact of Economic Freedom on Economic and Environmental Performance: Evidence from European Countries. Sustainability 2021, 13, 2380. [Google Scholar] [CrossRef]
  40. Alola, A.A.; Alola, U.V.; Akdag, S.; Yildirim, H. The Role of Economic Freedom and Clean Energy in Environmental Sustainability: Implication for the G-20 Economies. Environ. Sci. Pollut. Res. 2022, 29, 36608–36615. [Google Scholar] [CrossRef]
  41. Duarte, R.; Mainar, A.; Sánchez-Chóliz, J. Social Groups and CO2 Emissions in Spanish Households. Energy Policy 2012, 44, 441–450. [Google Scholar] [CrossRef]
  42. Wang, Q.; Niu, G.; Gan, X.; Cai, Q. Green Returns to Education: Does Education Affect Pro-environmental Attitudes and Behaviors in China? PLoS ONE 2022, 17, e0263383. [Google Scholar] [CrossRef]
  43. Li, X.; Ullah, S. Caring for the Environment: How CO2 Emissions Respond to Human Capital in BRICS Economies? Environ. Sci. Pollut. Res. 2022, 29, 18036–18046. [Google Scholar] [CrossRef]
  44. Li, S.; Zhou, C. What are the Impacts of Demographic Structure on CO2 Emissions? A Regional Analysis in China via Heterogeneous Panel Estimates. Sci. Total Environ. 2019, 650, 2021–2031. [Google Scholar] [CrossRef]
  45. Zafar, M.W.; Saleem, M.M.; Destek, M.A.; Caglar, A.E. The Dynamic Linkage between Remittances, Export Diversification, Education, Renewable Energy Consumption, Economic Growth, and CO2 Emissions in Top Remittance-receiving Countries. Sustain. Dev. 2022, 30, 165–175. [Google Scholar] [CrossRef]
  46. Khan, M. CO2 Emissions and Sustainable Economic Development: New Evidence on the Role of Human Capital. Sustain. Dev. 2020, 28, 1279–1288. [Google Scholar] [CrossRef]
  47. Cui, Y.; Wei, Z.; Xue, Q.; Sohail, S. Educational Attainment and Environmental Kuznets Curve in China: An Aggregate and Disaggregate Analysis. Environ. Sci. Pollut. Res. 2022, 29, 45612–45622. [Google Scholar] [CrossRef]
  48. Balaguer, J.; Cantavella, M. The Role of Education in the Environmental Kuznets Curve: Evidence from Australian Data. Energy Econ. 2018, 70, 289–296. [Google Scholar] [CrossRef]
  49. Subramaniam, Y.; Masron, T.A. Education, Methane Emission and Poverty in Developing Countries. J. Environ. Econ. Policy 2020, 9, 355–369. [Google Scholar] [CrossRef]
  50. Ullah, S.; Ozturk, I.; Usman, A.; Majeed, M.T.; Akhtar, P. On the Asymmetric Effects of Premature Deindustrialization on CO2 Emissions: Evidence from Pakistan. Environ. Sci. Pollut. Res. 2020, 27, 13692–13702. [Google Scholar] [CrossRef]
  51. Yao, Y.; Ivanovski, K.; Inekwe, J.; Smyth, R. Human Capital and CO2 Emissions in the Long Run. Energy Econ. 2020, 91, 104907. [Google Scholar] [CrossRef]
  52. Khan, Z.; Ali, S.; Dong, K.; Li, R.Y.M. How does Fiscal Decentralization Affect CO2 Emissions? The Roles of Institutions and Human Capital. Energy Econ. 2021, 94, 105060. [Google Scholar] [CrossRef]
  53. Wang, J.; Xu, Y. Internet usage, Human Capital and CO2 Emissions: A Global Perspective. Sustainability 2021, 13, 8268. [Google Scholar] [CrossRef]
  54. Lin, X.; Zhao, Y.; Ahmad, M.; Ahmed, Z.; Rjoub, H.; Adebayo, T.S. Linking Innovative Human Capital, Economic Growth, and CO2 Emissions: An Empirical Study based on Chinese Provincial Panel Data. Int. J. Environ. Res. Public Health 2021, 18, 8503. [Google Scholar] [CrossRef] [PubMed]
  55. Rahman, M.M.; Nepal, R.; Alam, K. Impacts of Human Capital, Exports, Economic Growth and Energy Consumption on CO2 Emissions of a Cross-sectionally Dependent Panel: Evidence from the Newly Industrialized countries (NICs). Environ. Sci. Policy 2021, 121, 24–36. [Google Scholar] [CrossRef]
  56. Fraser Institute. Economic Freedom. 2022. Available online: https://www.fraserinstitute.org/economic-freedom/dataset?geozone=world&page=dataset (accessed on 11 March 2022).
  57. World Bank. School Enrollment, Tertiary (% Gross) 2022. Available online: https://data.worldbank.org/indicator/SE.TER.ENRR (accessed on 25 February 2022).
  58. Emirmahmutoglu, F.; Kose, N. Testing for Granger Causality in Heterogeneous Mixed Panels. Econ. Model. 2011, 28, 870–876. [Google Scholar] [CrossRef]
  59. Im, K.S.; Pesaran, M.H.; Shin, Y. Testing for unit roots in heterogeneous panels. J. Econ. 2003, 115, 53–74. [Google Scholar] [CrossRef]
  60. Pesaran, M.H. A simple panel unit root test in the presence of cross-section dependence. J. Appl. Econ. 2007, 22, 265–312. [Google Scholar] [CrossRef] [Green Version]
Table 1. Descriptive statistics of the series.
Table 1. Descriptive statistics of the series.
CharacteristicsNObservationsCOEFGOVITFEDU
Mean275137.68957.61415.98058.342064.1684
Maximum2751325.66878.36007.83339.5009 142.8520
Minimum275132.92715.44004.21496.106019.5623
Std.Dev.275133.58140.42540.85490.563817.5713
Table 2. Results of cross-sectional dependence and heterogeneity tests.
Table 2. Results of cross-sectional dependence and heterogeneity tests.
TestTest Statisticp Value
LM691.30.0000
LM CD17.620.0000
LMadj.21.640.0000
˜ 12.3070.000
˜ adj . 14.8790.000
Table 3. Results of the CIPS unit root test.
Table 3. Results of the CIPS unit root test.
VariablesConstantConstant + Trend
CO−2.061−2.102
D(CO)−4.328 ***−4.269 ***
EF−1.823−2.012
D(EF)−3.976 ***−4.124 ***
GOV−1.905−2.201
D(GOV)−3.863 ***−4.007 ***
ITF−2.076−1.975
D(ITF)−3.561 ***−3.967 ***
EDU−1.972−2.475
D(EDU)−3.937 ***−4.033 ***
*** significant at 1% significance level.
Table 4. Results of the bootstrap Granger causality test between CO and EF.
Table 4. Results of the bootstrap Granger causality test between CO and EF.
CountryEF ↛ COCO ↛ EF
Wald Statisticp ValueWald Statisticp Value
Belgium1.9040.5926.1660.104
Bulgaria0.1340.7140.0330.857
Croatia0.5480.4590.5390.463
Cyprus1.4970.47311.8120.003
Czechia5.2640.0220.0780.780
Denmark11.3360.0106.3310.097
Estonia2.1100.5500.7580.859
Finland0.3010.8605.8140.055
France0.2430.8862.3320.312
Greece2.9890.3937.9740.047
Hungary2.6610.4472.8470.416
Ireland7.0390.0301.4670.480
Italy0.9180.3380.1460.703
Latvia0.2410.6230.0240.878
Lithuania0.5690.4510.3140.575
Malta0.1140.7350.2330.629
Netherlands0.0500.8220.0380.846
Poland0.5270.7681.1770.555
Portugal11.8640.00811.4030.010
Romania4.8120.0901.4190.492
Slovakia0.2320.6300.4040.525
Slovenia0.2760.6000.0880.767
Spain17.8240.0002.0960.553
Sweden0.1880.6650.1190.730
Panel72.6850.01259.9980.115
Note: Optimal lag length is selected considering the Schwarz information criterion and bootstrap probability values are produced from 10,000 replications.
Table 5. Results of the bootstrap Granger causality test between CO and GOV.
Table 5. Results of the bootstrap Granger causality test between CO and GOV.
CountryGOV ↛ COCO ↛ GOV
Wald Statisticp ValueWald Statisticp Value
Belgium11.1230.0114.2950.231
Bulgaria4.3010.23114.0270.003
Croatia0.4340.5100.3570.550
Cyprus17.8260.0001.5340.674
Czechia14.4880.0001.2620.261
Denmark1.9570.5811.4350.697
Estonia0.0150.9023.2040.073
Finland1.1050.2932.3730.123
France1.1730.2790.8090.368
Greece5.1290.16339.7720.000
Hungary1.9920.3690.3930.822
Ireland10.9150.0123.8930.273
Italy4.0770.0432.9920.084
Latvia0.3720.5420.0430.837
Lithuania0.0100.9190.6160.432
Malta19.5050.00011.1110.011
Netherlands0.5600.4540.0270.870
Poland0.7380.3900.0240.877
Portugal1.5760.2090.0940.760
Romania0.0920.7612.6010.107
Slovakia0.3940.5300.0770.781
Slovenia7.1300.0680.6680.881
Spain8.2210.01612.9020.002
Sweden4.9490.0843.0190.221
Panel 118.5580.000109.1280.000
Note: Optimal lag length is selected considering the Schwarz information criterion and bootstrap probability values are produced from 10,000 replications.
Table 6. Results of the bootstrap Granger causality test between CO and ITF.
Table 6. Results of the bootstrap Granger causality test between CO and ITF.
CountryITF ↛ COCO ↛ ITF
Wald Statisticp ValueWald Statisticp Value
Belgium5.8300.1201.7280.631
Bulgaria1.4500.4840.8860.642
Croatia7.2030.0664.5540.208
Cyprus0.0260.8731.6330.201
Czechia1.5980.2060.0360.849
Denmark0.2080.97610.8960.012
Estonia3.8940.2731.0970.778
Finland0.5860.9004.5990.204
France7.9890.0466.6890.082
Greece3.6750.2990.2930.961
Hungary9.1570.0100.4840.785
Ireland0.3720.5420.2560.613
Italy5.5170.0192.0390.153
Latvia0.0080.9280.0150.904
Lithuania0.0770.7810.5500.458
Malta0.2840.5940.0180.893
Netherlands2.3900.1220.0930.760
Poland0.6880.7091.5290.466
Portugal1.4800.2240.3630.547
Romania3.7170.1561.5240.467
Slovakia0.1700.6800.0520.820
Slovenia1.5550.2120.0000.986
Spain32.0180.00011.7050.008
Sweden3.2970.0690.0000.996
Panel 95.7460.00048.0270.472
Note: Optimal lag length is selected considering the Schwarz information criterion and bootstrap probability values are produced from 10,000 replications.
Table 7. Results of the bootstrap Granger causality test between CO and EDU.
Table 7. Results of the bootstrap Granger causality test between CO and EDU.
CountryEDU ↛ COCO ↛EDU
Wald Statisticp ValueWald Statisticp Value
Belgium3.0300.3877.8910.048
Bulgaria3.6240.3055.1770.159
Croatia4.0700.0444.1960.041
Cyprus0.5920.7442.0350.361
Czechia2.7680.4291.6080.658
Denmark2.5790.46113.4680.004
Estonia0.9210.3370.0960.757
Finland1.6510.1991.2840.257
France0.0400.8420.6140.433
Greece0.1700.6800.0760.783
Hungary1.6540.6475.3900.145
Ireland2.1450.3428.2620.016
Italy12.1340.0072.6920.442
Latvia3.2820.35026.6050.000
Lithuania0.7750.6791.9280.381
Malta1.5570.4590.8780.645
Netherlands7.4850.0062.2380.135
Poland8.5690.0364.1650.244
Portugal8.2450.0160.0050.997
Romania2.1130.5492.2940.514
Slovakia1.0450.5931.9190.383
Slovenia1.0970.2951.1740.279
Spain6.3860.0944.3010.231
Sweden16.9650.0011.2630.738
Panel 87.2350.00092.0870.000
Note: Optimal lag length is selected considering the Schwarz information criterion and bootstrap probability values are produced from 10,000 replications.
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Sart, G.; Bayar, Y.; Danilina, M.; Sezgin, F.H. Economic Freedom, Education and CO2 Emissions: A Causality Analysis for EU Member States. Int. J. Environ. Res. Public Health 2022, 19, 8061. https://doi.org/10.3390/ijerph19138061

AMA Style

Sart G, Bayar Y, Danilina M, Sezgin FH. Economic Freedom, Education and CO2 Emissions: A Causality Analysis for EU Member States. International Journal of Environmental Research and Public Health. 2022; 19(13):8061. https://doi.org/10.3390/ijerph19138061

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Sart, Gamze, Yilmaz Bayar, Marina Danilina, and Funda Hatice Sezgin. 2022. "Economic Freedom, Education and CO2 Emissions: A Causality Analysis for EU Member States" International Journal of Environmental Research and Public Health 19, no. 13: 8061. https://doi.org/10.3390/ijerph19138061

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