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Proceedings of

3rd International Conference on Advances in Economics, Management and Social Study EMS 2015

"NMM-STONED: A NORMAL MIXTURE MODEL BASED STOCHASTIC SEMI-PARAMETRIC BENCHMARKING METHOD"

XIAOFENG DAI
DOI
10.15224/978-1-63248-058-3-95
Pages
65 - 69
Authors
1
ISBN
978-1-63248-058-3

Abstract: “This paper presents a novel benchmarking tool, NMM-StoNED, which identifies the best practices closely located with each decision making unit (DMU) in the input-output space. Unlike the conventional techniques such as DEA where the success recepies of the benchmarks may not be transferable to all DMUs given their differences in, e.g., the operational scales, best practices identified by this method do not suffer from these problems and offer more practical values. NMM-StoNED is a specific configuration of the clustering and efficiency estimation algorithms in the benchmarking framework previously presented. This combination is able to cluster DMUs into less ambiguous groups and model the inefficiencies in a stochastic semi-nonparametric framework, which produces more accurate results than conventional benchmarking techniques such as DEA or other combinations such as the integration of K-means and StoNED. The performance comparison between NMM-StoNED and DEA has previously been reported”

Keywords: benchmarking, normal mixture model (NMM), data envelopment analysis (DEA), stochastic semi-nonparametric envelopment of data (StoNED)

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