DEA (Data Envelopment Analysis) is the optimization method of
mathematical programming to generalize the Farrell(1957) single-input/
single-output technical efficiency measure to the multiple-input/
multiple-output case by constructing a relative efficiency score as the
ratio of a single virtual output to a single virtual input. Thus DEA
become a new tool in operational research for measuring technical
efficiency. It originally was developed by Charnes, Cooper, Rhodes(1978)
with CRS and was extended by Banker, Charnes, Cooper(1984) to include
variable returns to scale. So the basic DEA models are known as CCR and
BCC.
Since 1978 over 1000 articles, books and dissertation have been
published and DEA has rapidly extended to returns to scale, dummy or
categorical variables, discretionary and non-discretionary variables,
incorporating value judgments, longitudinal analysis, weight
restrictions, stochastic DEA, non-parametric Malmquist indices,
technical change in DEA and many other topics.
Up to now the DEA measure
has been used to evaluate and compare educational departments (schools,
colleges and universities), health care (hospitals, clinics) prisons,
agricultural production, banking, armed forces, sports, market research,
transportation (highway maintenance), courts, benchmarking, index
number construction and many other applications.At the moment
researchers follow wide ranges of DEA and related topics.
Here are some topics in DEA:
Returns to scale
Dummy or categorical variables
Discretionary and non-discretionary variables
Incorporating judgment
Longitudinal analysis
Weight restriction
Stochastic DEA
Fuzzy and imprecise DEA
Non-parametric Malmquist indices
Technical change in DEA
Dynamics of Data Envelopment Analysis
Sensitivity
and many more ….
Returns to scale
Dummy or categorical variables
Discretionary and non-discretionary variables
Incorporating judgment
Longitudinal analysis
Weight restriction
Stochastic DEA
Fuzzy and imprecise DEA
Non-parametric Malmquist indices
Technical change in DEA
Dynamics of Data Envelopment Analysis
Sensitivity
and many more ….
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