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Detection of Pseudo CRS Frontier for a Negative Data Using RTS Model of Allahyar & Modified Multiplier BCC Model

EasyChair Preprint 2306

21 pagesDate: January 4, 2020

Abstract

Performance measurement of Decision Making Units (DMU) possessing an array of positive and negative type of input and output data has been an extensively researched topic in Data Envelopment Analysis. However, assessment of Return to Scale (RTS) under negative data problem has only been possible after the consideration of a Variable Return to Scale assumption. Steps referred earlier were indeed purported a solution around the vicinity of the Decision Making Unit under examination to predict the nature of the Return to Scale of a firm. The extant investigation extends the research of Allahyar, M. (2015) to identify a Pseudo Constant Return to Scale Frontier for a negative data problem along with the new origin based on the provided data. However, this approach seems to be ineffective to create a frontier for multiple input output scenario. In this regard, a new variation of Multiplier form of BCC model is proposed here to detect the new origin for the sake of designing the Pseudo CRS Frontier. Small examples are added for the elaboration of the CRS efficient DMUs using methods described by Allahyar, M. (2015) and identification of the New Origin from the Multiplier form of BCC model.

Keyphrases: Constant Return to Scale, Data Envelopment Analysis, negative data

BibTeX entry
BibTeX does not have the right entry for preprints. This is a hack for producing the correct reference:
@booklet{EasyChair:2306,
  author    = {Subhadip Sarkar},
  title     = {Detection of Pseudo CRS Frontier for a Negative Data Using RTS Model of Allahyar & Modified Multiplier BCC Model},
  howpublished = {EasyChair Preprint 2306},
  year      = {EasyChair, 2020}}
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