2020
DOI: 10.3390/w12020553
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Operational Efficiency of Mexican Water Utilities: Results of a Double-Bootstrap Data Envelopment Analysis

Abstract: The objective of this paper is to estimate the operational efficiency of Mexican water utilities and identify the context variables that impact their efficiency. In particular, a bootstrap data envelopment analysis (DEA) and a bootstrap truncated regression analysis are combined in a two-stage research method. In the first stage, an input-oriented DEA model is used to determine bootstrap efficiency scores. Then, the corrected distribution function of the efficiency scores is used to estimate a truncated regres… Show more

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Cited by 25 publications
(9 citation statements)
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“…Recent studies have used complex variants of the DEA, such as super-efficiency (e.g., to investigate the potential for efficiency improvement [4]), DEA-scale efficiency (e.g., to examine the efficiency of leakage-management [14]); DEA model with statistical tolerance (e.g., to assess the efficiency of water and sewerage companies (WaSCs) [38]); shared input data envelopment analysis model (e.g., to separately measure the efficiency when the same operator delivers more than one service, as water and wastewater services [39]); the directional metadistance function (e.g., to revisit the relationship between ownership and performance [13]; Bootstrap DEA (e.g., to identify the determinants of efficiency of water provision services [40,41] or to evaluate the influence of the management nature (private vs. public) on efficiency [10]); DEA double bootstrap (e.g., to overcome the limitation of deterministic method that does not allow identifying environmental factors influencing efficiency scores [42]); the DEA-based approach on Directional Distance Function (DDF) (e.g., to measure the performance of the integrated production of desirable and undesirable outputs [43]); or Network DEA models (e.g., to overcome the shortcomings of the standard AED for relative performance assessment (which do not allow setting clear guidelines for improvement) [44]).…”
Section: Literature Analysing Efficiency and Productivity In Water Supply: Dea Specificationsmentioning
confidence: 99%
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“…Recent studies have used complex variants of the DEA, such as super-efficiency (e.g., to investigate the potential for efficiency improvement [4]), DEA-scale efficiency (e.g., to examine the efficiency of leakage-management [14]); DEA model with statistical tolerance (e.g., to assess the efficiency of water and sewerage companies (WaSCs) [38]); shared input data envelopment analysis model (e.g., to separately measure the efficiency when the same operator delivers more than one service, as water and wastewater services [39]); the directional metadistance function (e.g., to revisit the relationship between ownership and performance [13]; Bootstrap DEA (e.g., to identify the determinants of efficiency of water provision services [40,41] or to evaluate the influence of the management nature (private vs. public) on efficiency [10]); DEA double bootstrap (e.g., to overcome the limitation of deterministic method that does not allow identifying environmental factors influencing efficiency scores [42]); the DEA-based approach on Directional Distance Function (DDF) (e.g., to measure the performance of the integrated production of desirable and undesirable outputs [43]); or Network DEA models (e.g., to overcome the shortcomings of the standard AED for relative performance assessment (which do not allow setting clear guidelines for improvement) [44]).…”
Section: Literature Analysing Efficiency and Productivity In Water Supply: Dea Specificationsmentioning
confidence: 99%
“…In the literature reviewed, a commonly used input variable is operation or maintenance costs [2][3][4][5][6]8,13,[23][24][25]37,42], but other costs have also been considered, such as staff cost [3,4], indirect labor cost for pipe network management [14], capital expenditure [37], amortization and taxes, water purchased and energy cost for producing drinking water [3], total expenses [71], or total production cost [10]. In some works, the production inputs have been included, such as labor in absolute terms [6,8,13,24,42], relative terms (staff per 1000 connections [5], number of employees per 1000 consumers [41]), total assets or capital stock [2,23,25], and energy [4].…”
Section: Inputs and Outputs Used To Analyze The Efficiency Of The Water Supply Managementmentioning
confidence: 99%
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“…Measuring operational efficiency in an optimum way depends on the industry involved and the quality of data available. For example, in the water industry, Ablanedo-Rosas, Campanur, Olivares-Benitez and Nunez [1] suggest the use of bootstrap data envelopment analysis (DEA) and bootstrap truncated regression analysis methods. Similarly, for waste management, Dias, Madaleno, Robaina and Meireles [11] recommended the use of the collection capacity use (CCU) and the segregated waste collection efficiency (SWE) methods.…”
Section: Introductionmentioning
confidence: 99%