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The conventional data envelopment analysis(DEA) measures the relative efficiencies of a set of decision making units with exact values of inputs and outputs.In real-world problems,however,inputs and outputs typically have some levels of fuzziness.To analyze a decision making unit(DMU) with fuzzy input/output data,previous studies provided the fuzzy DEA model and proposed an associated evaluating approach.Nonetheless,numerous deficiencies must still be improved,including the αcut approaches,types of fuzzy numbers,and ranking techniques.Moreover,a fuzzy sample DMU still cannot be evaluated for the Fuzzy DEA model.Therefore,this paper proposes a fuzzy DEA model based on sample decision making unit(FSDEA).Five evaluation approaches and the related algorithm and ranking methods are provided to test the fuzzy sample DMU of the FSDEA model.A numerical experiment is used to demonstrate and compare the results with those obtained using alternative approaches.
The conventional data envelopment analysis (DEA) measures the relative efficiencies of a set of decision making units with exact values of inputs and outputs.In real-world problems, however, inputs and outputs typically have some levels of fuzziness. To analyze a decision making unit (DMU) with fuzzy input / output data, previous studies provide the fuzzy DEA model and proposed an associated evaluating approach. Nonetheless, numerous deficiencies must still be improved, including the αcut approaches, types of fuzzy numbers, and ranking techniques. Moreover, a fuzzy sample DMU still can not be evaluated as the Fuzzy DEA model.Therefore, this paper proposes a fuzzy DEA model based on sample decision making unit (FSDEA) .Five evaluation approaches and the related algorithm and ranking methods are provided to test the fuzzy sample DMU of the FSDEA model. A numerical experiment is used to demonstrate and compare the results with those obtained using alternatives approaches.