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Efficiency aggregation with enhanced Russell measures in data envelopment analysis
Authors:WW Cooper [Author Vitae]  Zhimin Huang [Author Vitae]
Institution:a The Red McCombs School of Business, University of Texas at Austin, 1 University Station B6500, Austin, TX 78712-1174, USA
b School of Business, Adelphi University, Garden City, Long Island, NY 11530, USA
c School of Business, Pfeiffer University, Misenheimer, NC 28109, USA
d Centro de Investigación Operativa, Universidad Miguel Hernandez, Edificio Torretamarit, Avda. Ferrocarril s/n, 03202-Elche (Alicante), Spain
Abstract:In aggregation for data envelopment analysis (DEA), a jointly determined aggregate measure of output and input efficiency is desired that is consistent with the individual decision making unit measures. An impasse has been reached in the current state of the literature, however, where only separate measures of input and output efficiency have resulted from attempts to aggregate technical efficiency with the radial measure models commonly employed in DEA. The latter measures are “incomplete” in that they omit the non-zero input and output slacks, and thus fail to account for all inefficiencies that the model can identify. The Russell measure eliminates the latter deficiency but is difficult to solve in standard formulations. A new approach has become available, however, which utilizes a ratio measure in place of the standard formulations. Referred to as an enhanced Russell graph measure (ERM), the resulting model is in the form of a fractional program. Hence, it can be transformed into an ordinary linear programming structure that can generate an optimal solution for the corresponding ERM model. As shown in this paper, an aggregate ERM can then be formed with all the properties considered to be desirable in an aggregate measure—including jointly determined input and output efficiency measures that represent separate estimates of input and output efficiency. Much of this paper is concerned with technical efficiency in both individual and system-wide efficiency measures. Weighting systems are introduced that extend to efficiency-based measures of cost, revenue, and profit, as well as derivatives such as rates of return over cost. The penultimate section shows how the solution to one model also generates optimal solutions to models with other objectives that include rates of return over cost and total profit. This is accomplished in the form of efficiency-adjusted versions of these commonly used measures of performance.
Keywords:Efficiency  Data envelopment analysis  Fractional programming  Individual entity efficiencies  Aggregate efficiencies
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