Combining data envelopment analysis and multi-objective model for the efficient facility location–allocation decision

Jae‐Dong Hong1, Ki Young Jeong2
1Industrial Engineering, South Carolina State University, Orangeburg, SC, 29117, USA
2Engineering Management, University of Houston at Clear Lake, Houston, TX, 77058, USA

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