Chance Constrained Input Relaxation to Congestion in Stochastic DEA. An Application to Iranian Hospitals


  •  Hooshang Kheirollahi    
  •  Behzad Karami Matin    
  •  Mohammad Mahboubi    
  •  Mehdi Mirzaei Alavijeh    

Abstract

This article developed an approached model of congestion, based on relaxed combination of inputs, in stochastic data envelopment analysis (SDEA) with chance constrained programming approaches. Classic data envelopment analysis models with deterministic data have been used by many authors to identify congestion and estimate its levels; however, data envelopment analysis with stochastic data were rarely used to identify congestion. This article used chance constrained programming approaches to replace stochastic models with ‘‘deterministic equivalents”. This substitution leads us to non-linear problems that should be solved. Finally, the proposed method based on relaxed combination of inputs was used to identify congestion input in six Iranian hospital with one input and two outputs in the period of 2009 to 2012.



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