A new approach to determine efficient DMUs in DEA models using inverse optimization

author

  • GH.R Amin Assistant Professor of OR, Dep. of Computer Science, Postgraduate Engineering Centre, Islamic Azad University, Tehran South Branch, Tehran, Iran
Abstract:

This paper proposes a new approach for determining efficient DMUs in DEA models using inverse optimi-zation and without solving any LPs. It is shown that how a two-phase algorithm can be applied to detect effi-cient DMUs. It is important to compare computational performance of solving the simultaneous linear equa-tions with that of the LP, when computational issues and complexity analysis are at focus.

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Journal title

volume 3  issue 4

pages  67- 70

publication date 2007-04-01

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