TY - CHAP
T1 - Efficiency of Water Provision Service: A Visual Study of Data Envelopment Analysis
AU - Ripoll-Zarraga, Ane Elixabete
PY - 2024/8/20
Y1 - 2024/8/20
N2 - Efficiency analyses of public services, such as water resource management, is in vogue owing to investments financed by taxpayers. However, in regulated sectors, i.e., without competition, data envelopment analysis (DEA) results for decision-making are questionable. Indeed, DEA is sensitive to the data, inputs, and outputs chosen by the researcher and can be highly influenced by outliers. There is no space for specialization: a decision-making unit (DMU) may be inefficient generally but efficient in one particular activity (output). Previous studies on DEA of water efficiency use second-stage analysis with exogenous factors, i.e., not controlled by management, making empirical applications unfeasible. In addition, models do not reflect changes in the specialization of DMUs through time caused by financial crises or lack of infrastructure. DEA visualization combines the standard DEA analysis with multivariate statistical methods. In this chapter, water supply and quality in 31 provinces of China are benchmarked for 2020. The results show nine efficient provinces for the traditional DEA model (all the variables). Other provinces become efficient when considering infrastructure for water supply versus water quality (few pollutants). Two provinces are efficient due to a surplus of natural water resources (overcapacity) in relation to their population, allowing for high-quality water provision, which may be transferred to regions with high water scarcity.
AB - Efficiency analyses of public services, such as water resource management, is in vogue owing to investments financed by taxpayers. However, in regulated sectors, i.e., without competition, data envelopment analysis (DEA) results for decision-making are questionable. Indeed, DEA is sensitive to the data, inputs, and outputs chosen by the researcher and can be highly influenced by outliers. There is no space for specialization: a decision-making unit (DMU) may be inefficient generally but efficient in one particular activity (output). Previous studies on DEA of water efficiency use second-stage analysis with exogenous factors, i.e., not controlled by management, making empirical applications unfeasible. In addition, models do not reflect changes in the specialization of DMUs through time caused by financial crises or lack of infrastructure. DEA visualization combines the standard DEA analysis with multivariate statistical methods. In this chapter, water supply and quality in 31 provinces of China are benchmarked for 2020. The results show nine efficient provinces for the traditional DEA model (all the variables). Other provinces become efficient when considering infrastructure for water supply versus water quality (few pollutants). Two provinces are efficient due to a surplus of natural water resources (overcapacity) in relation to their population, allowing for high-quality water provision, which may be transferred to regions with high water scarcity.
UR - http://dx.doi.org/10.1142/9781800615786_0004
U2 - 10.1142/9781800615786_0004
DO - 10.1142/9781800615786_0004
M3 - Chapter
SN - 9781800615779
SN - 9781800615786
SN - 9781800615779
SN - 9781800615786
SP - 99
EP - 146
BT - Handbook on data envelopment analysis: Applications in business, finance, and sustainability
ER -