期刊
ECONOMIES
卷 9, 期 2, 页码 -出版社
MDPI
DOI: 10.3390/economies9020062
关键词
climate change; innovation; corruption; renewable energy; panel data
类别
This study examines the relationships between corruption, economic growth, renewable energies, international trade, and carbon dioxide emissions in European countries. The results show that corruption index and economic growth have a statistically significant positive impact on carbon dioxide emissions, while renewable energies and international trade help reduce climate change and improve environmental quality.
Corruption reflects a set of illegal activities that jeopardize the smooth functioning of economies, society, and climate and environmental issues. This article tests the relationships between economic growth, corruption, renewable energies, international trade, and carbon dioxide emissions using panel data for European countries, namely Portugal, Spain, Italy, Ireland, and Greece, from 1995-2015. As an econometric strategy, this research uses the panel fully modified least squares (FMOLS), panel dynamic least squares (DOLS), and panel two-stage least squares estimator (TSLS). Considering the variables utilized in the research and the panel unit root test, we observed that the variables are integrated I (1) in the first difference. The variables of corruption, economic growth, renewable energies, international trade, and carbon dioxide emissions are cointegrated in the long run, using the Pedroni and Kao residual cointegration test arguments. The methodology of Dumitrescu-Hurlin to test the causality between carbon dioxide emissions, corruption, economic growth, and renewable energy shows that there is unidirectional causality between carbon dioxide emissions and corruption and economic growth and corruption. The results suggest that the corruption index and economic growth have a statistically significant positive impact on carbon dioxide emissions. However, renewable energies and international trade reduce climate change and improve the environmental quality.
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