Eco-Efficiency Analysis of Swedish Regions: A second-stage DEA approach
(2018) NEKN01 20181Department of Economics
- Abstract
- This paper uses a two-stage data envelopment analysis (DEA) approach to measure and evaluate the relative eco-efficiency and the influencing factors of 17 out of 21 regions in Sweden during the period of 2008 and 2015. In the first stage of the DEA, a standard CCR model is used to calculate the relative eco-efficiency of the regions given multiple inputs and outputs. The model contains the variables labour, capital and energy consumption as desirable inputs, regional GDP as a desirable output and Co2 emissions as an undesirable output. On average, the results show that four regions are eco-efficiency leaders, eight are eco-efficiency followers and the remaining five are eco-efficiency moderates. The main finding from the first stage of the... (More)
- This paper uses a two-stage data envelopment analysis (DEA) approach to measure and evaluate the relative eco-efficiency and the influencing factors of 17 out of 21 regions in Sweden during the period of 2008 and 2015. In the first stage of the DEA, a standard CCR model is used to calculate the relative eco-efficiency of the regions given multiple inputs and outputs. The model contains the variables labour, capital and energy consumption as desirable inputs, regional GDP as a desirable output and Co2 emissions as an undesirable output. On average, the results show that four regions are eco-efficiency leaders, eight are eco-efficiency followers and the remaining five are eco-efficiency moderates. The main finding from the first stage of the DEA is that the regions in general should concentrate on energy consumption and capital stock reduction to improve eco-efficiency. However, the results differ slightly across the regions. The second stage of the DEA constitutes a fractional logit regression model, which is used to analyse the factors influencing differences in eco-efficiency across regions. The results indicate that enterprises’ production value of goods has a significant and negative effect on eco-efficiency, whereas environmental awareness and environmental sector have positive and significant effects on eco-efficiency. Furthermore, net income and population density are insignificant. Thus, there is potential to improve eco-efficiency in regions via a reduction in energy consumption and in capital stock while keeping the output constant. A concluding remark is that guidance of national legislation should be better implemented at the regional level. Alternatively, regional legislation based on the regions’ environmental prerequisites should be implemented to a greater extent. (Less)
- Popular Abstract
- This paper uses a two-stage data envelopment analysis (DEA) approach to measure and evaluate the relative eco-efficiency and the influencing factors of 17 out of 21 regions in Sweden during the period of 2008 and 2015. In the first stage of the DEA, a standard CCR model is used to calculate the relative eco-efficiency of the regions given multiple inputs and outputs. The model contains the variables labour, capital and energy consumption as desirable inputs, regional GDP as a desirable output and Co2 emissions as an undesirable output. On average, the results show that four regions are eco-efficiency leaders, eight are eco-efficiency followers and the remaining five are eco-efficiency moderates. The main finding from the first stage of the... (More)
- This paper uses a two-stage data envelopment analysis (DEA) approach to measure and evaluate the relative eco-efficiency and the influencing factors of 17 out of 21 regions in Sweden during the period of 2008 and 2015. In the first stage of the DEA, a standard CCR model is used to calculate the relative eco-efficiency of the regions given multiple inputs and outputs. The model contains the variables labour, capital and energy consumption as desirable inputs, regional GDP as a desirable output and Co2 emissions as an undesirable output. On average, the results show that four regions are eco-efficiency leaders, eight are eco-efficiency followers and the remaining five are eco-efficiency moderates. The main finding from the first stage of the DEA is that the regions in general should concentrate on energy consumption and capital stock reduction to improve eco-efficiency. However, the results differ slightly across the regions. The second stage of the DEA constitutes a fractional logit regression model, which is used to analyse the factors influencing differences in eco-efficiency across regions. The results indicate that enterprises’ production value of goods has a significant and negative effect on eco-efficiency, whereas environmental awareness and environmental sector have positive and significant effects on eco-efficiency. Furthermore, net income and population density are insignificant. Thus, there is potential to improve eco-efficiency in regions via a reduction in energy consumption and in capital stock while keeping the output constant. A concluding remark is that guidance of national legislation should be better implemented at the regional level. Alternatively, regional legislation based on the regions’ environmental prerequisites should be implemented to a greater extent. (Less)
Please use this url to cite or link to this publication:
http://lup.lub.lu.se/student-papers/record/8949752
- author
- Grabo, Lisa LU and Olsson, Josefine LU
- supervisor
- organization
- course
- NEKN01 20181
- year
- 2018
- type
- H1 - Master's Degree (One Year)
- subject
- keywords
- eco-efficiency, two-stage DEA model, fractional logit regression model, regional environmental performance, undesirable output
- language
- English
- id
- 8949752
- date added to LUP
- 2018-07-03 14:20:41
- date last changed
- 2018-07-03 14:20:41
@misc{8949752, abstract = {{This paper uses a two-stage data envelopment analysis (DEA) approach to measure and evaluate the relative eco-efficiency and the influencing factors of 17 out of 21 regions in Sweden during the period of 2008 and 2015. In the first stage of the DEA, a standard CCR model is used to calculate the relative eco-efficiency of the regions given multiple inputs and outputs. The model contains the variables labour, capital and energy consumption as desirable inputs, regional GDP as a desirable output and Co2 emissions as an undesirable output. On average, the results show that four regions are eco-efficiency leaders, eight are eco-efficiency followers and the remaining five are eco-efficiency moderates. The main finding from the first stage of the DEA is that the regions in general should concentrate on energy consumption and capital stock reduction to improve eco-efficiency. However, the results differ slightly across the regions. The second stage of the DEA constitutes a fractional logit regression model, which is used to analyse the factors influencing differences in eco-efficiency across regions. The results indicate that enterprises’ production value of goods has a significant and negative effect on eco-efficiency, whereas environmental awareness and environmental sector have positive and significant effects on eco-efficiency. Furthermore, net income and population density are insignificant. Thus, there is potential to improve eco-efficiency in regions via a reduction in energy consumption and in capital stock while keeping the output constant. A concluding remark is that guidance of national legislation should be better implemented at the regional level. Alternatively, regional legislation based on the regions’ environmental prerequisites should be implemented to a greater extent.}}, author = {{Grabo, Lisa and Olsson, Josefine}}, language = {{eng}}, note = {{Student Paper}}, title = {{Eco-Efficiency Analysis of Swedish Regions: A second-stage DEA approach}}, year = {{2018}}, }