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Measuring Efficiency

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Title: Measuring Efficiency


1
Measuring Efficiency in Public Sector
Organisations with Data Envelopment and Stochastic
Frontier Analysis
2
Contents
1. Definitions
2. Non-Parametric Models Data Envelopment
Analysis
3. Parametric Models Stochastic Frontier
Analysis
4. Examples
5.Conclusions
3
1. Definitions
4
1.1. Efficiency
output
Productivity / Efficiency

Relative Efficiency/ Inefficiency
0
Input
5
Output 2 / Input
Efficiency
where
weight given to output i
0
Output 1 / Input
6
In general,
Efficiency
where
weight given to the mth input
7
1.2. Technical, Allocative and Economic Efficiency
Output 2 / Input
Organisations 1 and 2 are both Technically
Efficient whereas Organisations 3, 4 and 5 are
not
but
Isocost
Organisation 1, compared to Organisation 2 is
also Allocatively (i.e. Input-Price) Efficient
Organisation 4 exhibits Technical (or X- or
Managerial) Inefficiency
Organisations 5 and 3 exhibit both Allocative and
Technical Inefficiency
0
Output 1 / Input
8
1.3. Output and Cost Orientation
Output 2 / Input
Input 2 / Output
0
0
Output 1 / Input
Input 1 / Output
Input Orientation Example Two Inputs One Output
Output Orientation Example Two Outputs One
Input
9
1.4. Constant and Variable Returns to Scale
output
CRS
VRS
0
Input
10
1.5. Parametric and Non-Parametric Approaches
Parametric We assume that Inefficiency is
distributed in a certain
way. (Stochastic Frontier
Analysis)
Non-Parametric We let the data estimate an
Efficiency Frontier.
(Data Envelopment Analysis)
11
2. Non-Parametric Models Data Envelopment
Analysis
12
2. Non-Parametric Models Data Envelopment
Analysis
Example One Input (Lecturers) and Two Outputs
(Research and Teaching)
7 6 5 4
Y2/X
B
E
F
A
C
3 2 1
D
G
Y1/X
0 1 2 3 4
5 6 7
13
2. Non-Parametric Models Data Envelopment
Analysis
7 6 5 4
Y2/X
B
E
F
A
Efficient Frontier
C
3 2 1
D
G
Y1/X
0 1 2 3 4
5 6 7
14
2. Non-Parametric Models Data Envelopment
Analysis
7 6 5 4
Y2/X
B
Lecturer D is Technically Inefficient
E
F
A
P
Lecturer C is both technically and
allocative inefficient
C
3 2 1
D
G
Y1/X
0 1 2 3 4
5 6 7
15
2. Non-Parametric Models Data Envelopment
Analysis
Efficiency
but
weights V and U are unknown
And this is the main benefit of DEA it
estimates the optimal weights for us
16
2. Non-Parametric Models Data Envelopment
Analysis
7 6 5 4
Y2/X
  • DEA assigns the best possible weight to each
    unit

B
E
F
  • DEA constructs a piecewise linear frontier
    which envelops
  • any inefficient units

A
P
C
3 2 1
D
  • DEA measures inefficiency as the radial
    distance from an
  • inefficient unit to the frontier

G
  • DEA is fully driven by the data (with its pros
    and cons)

Y1/X
0 1 2 3 4
5 6 7
17
2. Non-Parametric Models Data Envelopment
Analysis
Advantages
  • Easy to use
  • Allows multiple inputs and outputs
  • No specified functional form
  • No prior weights specification

Disadvantages
  • No account for random noise / error
  • No goodness of fit measures
  • Sensitive to outliers

18
3. Parametric Models Stochastic Frontier Analysis
19
3. Parametric Models Stochastic Frontier
Analysis
DEA
20
3. Parametric Models Stochastic Frontier
Analysis
OLS Linear Regression
21
3. Parametric Models Stochastic Frontier
Analysis
OLS Non-Linear Regression
22
3. Parametric Models Stochastic Frontier
Analysis
Corrected OLS Non-Linear Regression
Most efficient country
23
3. Parametric Models Stochastic Frontier
Analysis
Stochastic Frontier
24
3. Parametric Models Stochastic Frontier
Analysis
Corrected OLS Non-Linear Regression
Inefficiency
Corrected OLS does not allow for any errors
25
3. Parametric Models Stochastic Frontier
Analysis
Stochastic Frontier
Stochastic Error
Stochastic Error
Inefficiency
SFA does allow for errors
26
3. Parametric Models Stochastic Frontier
Analysis
SFA
  • Not completely moulded by data appeals to
    economic theory
  • Uses full sample information
  • Allows for errors
  • We are not so interested in the bs but in the
    error term

Because inefficiency is embedded into this term!
27
3. Parametric Models Stochastic Frontier
Analysis
SFA separates the residual into two parts
where
Inefficiency (we need to assume how it is
distributed)
and
stochastic error
28
3. Parametric Models Stochastic Frontier
Analysis
Advantages
  • Accounts for random noise / error
  • Goodness of fit measures
  • Deals with outliers
  • Closer to economic theory
  • Uses full sample information

Disadvantages
  • Problems with multiple inputs/outputs
  • No preferred specified functional form
  • Large sample is needed

29
4. Examples
30
4. Example 1 DEA
The efficiency of Australian universities a data
envelopment analysis M. Abbott and C.
Doucouliagosa Economics of Education Review 22
(2003) 8997
  • 36 universities, 1995
  • Input orientation
  • Variable Returns to Scale
  • Ouputs
  • Number of Full-Time Equivalent Students
  • Research Quantum Allocation (i.e. Government
    funding) received by the university
  • Inputs
  • Number of Full-Time Equivalent Academic Staff
  • Number of Full-Time Equivalent Non-Academic
    Staff
  • Expenditure on all Inputs other than Labour
  • Value of non-current assets (proxy for capital
    stock)

31
4. Example 1 (cont.) DEA
The efficiency of Australian universities a data
envelopment analysis M. Abbott and C.
Doucouliagosa Economics of Education Review 22
(2003) 8997
32
4. Example 2 DEA over time
Assessment of Technical and Scale Efficiency of
the National Transplant System (in
Brazil) (Avaliação da Eficiência Têcnica e da
Eficiência de Escala do Sistema Nacional de
Transplantes) A. Marinho and S. de Souza
Cardoso Boletim IPEA Institute of Applied
Economic Research (Brazil) - February 2007
  • All organ transplants carried out in Brazil
    during 1995 and 2003
  • (Total numbers and by organ)
  • Output orientation
  • Both CRS and VRS models

33
4. Example 2 (cont.) DEA over time
Assessment of Technical and Scale Efficiency of
the National Transplant System (in
Brazil) (Avaliação da Eficiência Têcnica e da
Eficiência de Escala do Sistema Nacional de
Transplantes) A. Marinho and S. de Souza
Cardoso Boletim IPEA Institute of Applied
Economic Research (Brazil) - February 2007
(All transplants Constant Returns to Scale)
(All transplants Variable Returns to Scale)
34
4. Example 3 Two-Stage DEA
THE MEASUREMENT OF POLICE FORCE EFFICIENCY AN
ASSESSMENT OF U.K. HOME OFFICE POLICY Leigh M
Drake Richard Simper Contemporary Economic
Policy Oct 2005, pp. 465-482
  • 51 Police Force Areas in England and Wales,
    2001-2002
  • Two-stage DEA (the second stage, a
    Tobit-regression on Fear of Crime data)
  • Both Output and Input Orientation

35
4. Example 3 (cont.) Two-Stage DEA
THE MEASUREMENT OF POLICE FORCE EFFICIENCY AN
ASSESSMENT OF U.K. HOME OFFICE POLICY Leigh M
Drake Richard Simper Contemporary Economic
Policy Oct 2005, pp. 465-482
36
4. Example 3 (cont.) Two-Stage DEA
THE MEASUREMENT OF POLICE FORCE EFFICIENCY AN
ASSESSMENT OF U.K. HOME OFFICE POLICY Leigh M
Drake Richard Simper Contemporary Economic
Policy Oct 2005, pp. 465-482

37
4. Example 3 (cont.) Two-Stage DEA
THE MEASUREMENT OF POLICE FORCE EFFICIENCY AN
ASSESSMENT OF U.K. HOME OFFICE POLICY Leigh M
Drake Richard Simper Contemporary Economic
Policy Oct 2005, pp. 465-482
Technical Efficiency
Technical Efficiency
38
4. Example 4 - SFA
The Provision of Library Services by English
Local Authorities Philip Stevens National
Institute of Economic and Social Research,
Discussion Paper No. 259, 2005
  • 139 Local Authorities in England 2000/1
  • Cost (i.e. Input) Orientation
  • Three alternative distributional assumptions of
    inefficiency

Environmental Variables

Inefficiency
39
4. Example 4 (cont.) - SFA
The Provision of Library Services by English
Local Authorities Philip Stevens National
Institute of Economic and Social Research,
Discussion Paper No. 259, 2005
40
4. Example 4 (cont.) - SFA
The Provision of Library Services by English
Local Authorities Philip Stevens National
Institute of Economic and Social Research,
Discussion Paper No. 259, 2005
41
4. Example 4 (cont.) - SFA
The Provision of Library Services by English
Local Authorities Philip Stevens National
Institute of Economic and Social Research,
Discussion Paper No. 259, 2005
42
4. Example 5 DEA SFA
The technical efficiency of container ports
Comparing data envelopment analysis and
stochastic frontier analysis Kevin Cullinane,
Teng-Fei Wang, Dong-Wook Song, and Ping
Ji Transportation Research Part A 40 (2006)
354374
  • 57 Terminals in biggest 30 container ports in
    the world, 2001
  • Output orientation
  • DEA both with CRS and VRS
  • 4 alternative distributional assumptions used -
    SFA model

43
4. Example 5 (cont.) DEA SFA
The technical efficiency of container ports
Comparing data envelopment analysis and
stochastic frontier analysis Kevin Cullinane,
Teng-Fei Wang, Dong-Wook Song, and Ping
Ji Transportation Research Part A 40 (2006)
354374
44
4. Example 5 (cont.) DEA SFA
The technical efficiency of container ports
Comparing data envelopment analysis and
stochastic frontier analysis Kevin Cullinane,
Teng-Fei Wang, Dong-Wook Song, and Ping
Ji Transportation Research Part A 40 (2006)
354374
45
4. Example 5 (cont.) DEA SFA
The technical efficiency of container ports
Comparing data envelopment analysis and
stochastic frontier analysis Kevin Cullinane,
Teng-Fei Wang, Dong-Wook Song, and Ping
Ji Transportation Research Part A 40 (2006)
354374
Robustness Analysis
46
4. Example 6 Preliminary Analysis of Waste
Management Efficiency in Northern Ireland
  • Data for 20 District Councils
  • April 2005-May 2006
  • Cost (input) orientation
  • Total Cost
  • Total Income per Household, Tons sent for
    composting and recycling
  • Total Area (as environmental factor)
  • DEA Variable Returns

47
4. Example 6 (cont.) Preliminary Analysis of
Waste Management Efficiency in Northern Ireland
48
4. Example 6 (cont.) Preliminary Analysis of
Waste Management Efficiency in Northern Ireland
Source WasteDataFlow
49
4. Example 6 (cont.) Preliminary Analysis of
Waste Management Efficiency in Northern Ireland
If we remember, D is technically inefficient but
C is both technically and allocative inefficient.
7 6 5 4
Y2/X
Councils with efficiency scores below 1 exhibit
technical inefficiency, but only Castlereagh does
not present allocative inefficiency as well
P
C
3 2 1
D
Belfast, for example, should increase the tonnage
of materials sent for recycling by 78 per
cent and total income from waste disposal by 14
per cent
Y1/X
0 1 2 3 4
5 6 7
50
5. Conclusions
51
5. Conclusions
  • DEA and SFA are two different approaches to
    measuring efficiency
  • Both can be applied to Panel and Cross Sectional
    Data
  • Sometimes results not fully compatible
  • Sensitivity analysis (and caution!) required
  • Both techniques may provide useful insight and
    can inform policy

52
Measuring Efficiency in Public Sector
Organisations with Data Envelopment and Stochastic
Frontier Analysis
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