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Stochastic simulation based genetic algorithm for chance constrained data envelopment analysis problems

机译:基于随机模拟的遗传算法求解机会约束数据包络分析问题

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摘要

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.
机译:开发了遗传算法(GA)方法来解决机会约束数据包络分析(CCDEA)问题的P模型,其中包括“满意”的概念。这里的问题包括输入和输出是随机的情况以及仅输出是随机的情况。到目前为止,上述解决方案的基本解决方法是派生“确定性等价物”,这对所有随机参数都是困难的,因为没有紧凑的方法可用。在提出的方法中,随机目标函数和机会约束直接在遗传过程中使用。通过随机模拟技术检查机会约束的可行性。本文以印度银行业为例说明了上述方法。

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