2021
DOI: 10.3389/fenrg.2021.726127
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The Major Driving Factors of Carbon Emissions in China and Their Relative Importance: An Application of the LASSO Model

Abstract: China is one of the biggest energy consumers and carbon emitters in the world. Understanding the factors affecting carbon emissions is critical for policymakers to control the rising trend of carbon emissions. This paper investigates the relative importance of carbon emissions drivers in China. Literature review has been carried out to determine a set of predominant independent variables; the LASSO model is then introduced to rank the relative importance among the set of independent variables. The results find… Show more

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Cited by 16 publications
(5 citation statements)
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“…Consequently, we chose to focus our investigation on variables such as population size, economic development level, urbanization rate, and industrial structure when exploring the spatio-temporal variations in carbon emission factors across Zhejiang Province's counties during the period spanning from 2002 to 2022, as detailed in Table 1. Specifically, population size was defined by the year-end resident population of each county within Zhejiang Province [44], economic development level was quantified using per capita GDP data for Zhejiang Province [45], urbanization rate was determined by the ratio of urban population to the total population at the year-end in each county [46], and industrial structure was expressed as the proportion of the secondary industry's value relative to each county's total GDP [47].…”
Section: Methods For Studying the Factors Influencing Carbon Emission...mentioning
confidence: 99%
“…Consequently, we chose to focus our investigation on variables such as population size, economic development level, urbanization rate, and industrial structure when exploring the spatio-temporal variations in carbon emission factors across Zhejiang Province's counties during the period spanning from 2002 to 2022, as detailed in Table 1. Specifically, population size was defined by the year-end resident population of each county within Zhejiang Province [44], economic development level was quantified using per capita GDP data for Zhejiang Province [45], urbanization rate was determined by the ratio of urban population to the total population at the year-end in each county [46], and industrial structure was expressed as the proportion of the secondary industry's value relative to each county's total GDP [47].…”
Section: Methods For Studying the Factors Influencing Carbon Emission...mentioning
confidence: 99%
“…We computed the largest λ and the smallest λ , while making the largest value of λ 10,000 times the smallest value. The 100 specifications sets of regressions were run with different values of λ , denoted as SP (Shum et al 2021 ). Specification 1 and specification 100 are the specifications with the smallest value of λ and the largest value of λ .…”
Section: Methodology and Datamentioning
confidence: 99%
“…The authors in (Apergis et al 2023) examine a modified iteration of Okun's Law, which integrates energy consumption and temperature variables, within the context of five Central Asian countries. According to the study (Shum et al 2021) on the primary drivers of carbon emissions in China, economic expansion and energy utilization were the main drivers of carbon emissions, followed by population density and industrialization. Although this study is not specific to Central Asia, it suggests that energy intensity, as a measure of energy consumption, can be a significant driver of carbon emissions.…”
Section: The Impact Of Energy Intensity On Co 2 Emissionsmentioning
confidence: 99%