Stochastic simulation based genetic algorithm for chance constrained data envelopment analysis problems
Genetic algorithm (GA) approach is developed for solving the P-model of chance constrained data envelopment analysis (CCDEA) problems, which include the concept of "Satisficing". Problems here include cases in which inputs and outputs are stochastic, as well as cases in which only the outputs are stochastic. The basic solution technique for the above has so far been deriving "deterministic equivalents", which is difficult for all stochastic parameters as there are no compact methods available. In the proposed approach, the stochastic objective function and chance constraints are directly used within the genetic process. The feasibility of chance constraints are checked by stochastic simulation techniques. A case of Indian banking sector has been presented to illustrate the above approach.
Year of publication: |
2011
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Authors: | Udhayakumar, A. ; Charles, V. ; Kumar, Mukesh |
Published in: |
Omega. - Elsevier, ISSN 0305-0483. - Vol. 39.2011, 4, p. 387-397
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Publisher: |
Elsevier |
Keywords: | Data envelopment analysis Satisficing Stochastic efficiency Stochastic simulation Genetic algorithm |
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