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Impacts of random noise and specification on estimates of capacity derived from data envelopment analysis
Institution:1. Rotterdam School of Management, Erasmus University, the Netherlands;2. Department of Economics, Universidad Autónoma de Madrid, Spain;3. Erasmus Research Institute of Management, Erasmus University, the Netherlands;1. Department of Public Health, Hygée Centre, Lucien Neuwirth Cancer Institut, Saint Priest en Jarez;2. Therapeutic Targeting in Oncology, EMR3738, Claude Bernard University, Lyon;3. Departments of Medical Oncology;4. Radiotherapy, Lucien Neuwirth Cancer Institut, Saint Priest en Jarez;5. Cellular and Biomolecular Radiobiology, EMR3738, Claude Bernard University, Lyon;6. Clinical Investigation Center and Clinical Epidemiology, CIE 3, Jean Monnet University, Saint-Etienne, France
Abstract:Data envelopment analysis (DEA) is widely used to estimate the efficiency of firms and has also been proposed as a tool to measure technical capacity and capacity utilization (CU). Random variation in output data can lead to downward bias in DEA estimates of efficiency and, consequently, upward bias in estimates of technical capacity. This can be particularly problematic for industries such as agriculture, aquaculture and fisheries where the production process is inherently stochastic due to environmental influences. This research uses Monte Carlo simulations to investigate possible biases in DEA estimates of technically efficient output and capacity output attributable to noisy data and investigates the impact of using a model specification that allows for variable returns to scale (VRS). We demonstrate a simple method of reducing noise induced bias when panel data is available. We find that DEA capacity estimates are highly sensitive to noise and model specification. Analogous conclusions can be drawn regarding DEA estimates of average efficiency.
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