Efficiency and Productivity Measurement: Bootstrapping DEA Scores

Slides:



Advertisements
Similar presentations
McGraw-Hill/Irwin Copyright © 2013 by The McGraw-Hill Companies, Inc. All rights reserved. A PowerPoint Presentation Package to Accompany Applied Statistics.
Advertisements

Subspace Embeddings for the L1 norm with Applications Christian Sohler David Woodruff TU Dortmund IBM Almaden.
Efficiency and Productivity Measurement: Data Envelopment Analysis
Efficiency and Productivity Measurement: Index Numbers
University of Queensland. Australia
1 Efficiency and Productivity Measurement: Multi-output Distance and Cost functions D.S. Prasada Rao School of Economics The University of Queensland Australia.
Stochastic DEA: Myths and misconceptions Timo Kuosmanen (HSE & MTT) Andrew Johnson (Texas A&M University) Mika Kortelainen (University of Manchester) XI.
Variance Estimation in Complex Surveys Third International Conference on Establishment Surveys Montreal, Quebec June 18-21, 2007 Presented by: Kirk Wolter,
The Derivative in Graphing and Application
Assumptions underlying regression analysis
Introduction to Propensity Score Matching
+ Validation of Simulation Model. Important but neglected The question is How accurately does a simulation model (or, for that matter, any kind of model)
Hypothesis testing and confidence intervals by resampling by J. Kárász.
CHAPTER 24: Inference for Regression
Today: Quizz 11: review. Last quizz! Wednesday: Guest lecture – Multivariate Analysis Friday: last lecture: review – Bring questions DEC 8 – 9am FINAL.
1 Statistical Tests of Returns to Scale Using DEA Rajiv D. Banker Hsihui Chang Shih-Chi Chang.
Multiple regression analysis
. PGM: Tirgul 8 Markov Chains. Stochastic Sampling  In previous class, we examined methods that use independent samples to estimate P(X = x |e ) Problem:
Resampling techniques Why resampling? Jacknife Cross-validation Bootstrap Examples of application of bootstrap.
Resampling techniques
Steps of a sound simulation study
4. Multiple Regression Analysis: Estimation -Most econometric regressions are motivated by a question -ie: Do Canadian Heritage commercials have a positive.
Bootstrap in Finance Esther Ruiz and Maria Rosa Nieto (A. Rodríguez, J. Romo and L. Pascual) Department of Statistics UNIVERSIDAD CARLOS III DE MADRID.
Bootstrapping LING 572 Fei Xia 1/31/06.
Stat 301 – Day 37 Bootstrapping, cont (5.5). Last Time - Bootstrapping A simulation tool for exploring the sampling distribution of a statistic, using.
Ka-fu Wong © 2004 ECON1003: Analysis of Economic Data Lesson6-1 Lesson 6: Sampling Methods and the Central Limit Theorem.
Bootstrap spatobotp ttaoospbr Hesterberger & Moore, chapter 16 1.
Business Statistics: Communicating with Numbers
+ DO NOW What conditions do you need to check before constructing a confidence interval for the population proportion? (hint: there are three)
Model Building III – Remedial Measures KNNL – Chapter 11.
Retail Labor Planning Model – Alix Partners Carolyn Taricco Erin Gripp Victoria Cohen.
QBM117 Business Statistics Estimating the population mean , when the population variance  2, is known.
1 Introduction to Estimation Chapter Concepts of Estimation The objective of estimation is to determine the value of a population parameter on the.
Chap 20-1 Statistics for Business and Economics, 6e © 2007 Pearson Education, Inc. Chapter 20 Sampling: Additional Topics in Sampling Statistics for Business.
Population All members of a set which have a given characteristic. Population Data Data associated with a certain population. Population Parameter A measure.
Bootstrapping – the neglected approach to uncertainty European Real Estate Society Conference Eindhoven, Nederlands, June 2011 Paul Kershaw University.
An evaluation of European airlines’ operational performance.
Montecarlo Simulation LAB NOV ECON Montecarlo Simulations Monte Carlo simulation is a method of analysis based on artificially recreating.
Bootstrapping (And other statistical trickery). Reminder Of What We Do In Statistics Null Hypothesis Statistical Test Logic – Assume that the “no effect”
Propensity Score Matching and Variations on the Balancing Test Wang-Sheng Lee Melbourne Institute of Applied Economic and Social Research The University.
1 Advances in the Construction of Efficient Stated Choice Experimental Designs John Rose 1 Michiel Bliemer 1,2 1 The University of Sydney, Australia 2.
+ Chapter 12: More About Regression Section 12.1 Inference for Linear Regression.
Sampling Error.  When we take a sample, our results will not exactly equal the correct results for the whole population. That is, our results will be.
Resampling techniques
Instructor: Eyal Amir Grad TAs: Wen Pu, Yonatan Bisk Undergrad TAs: Sam Johnson, Nikhil Johri CS 440 / ECE 448 Introduction to Artificial Intelligence.
Lecture 12: Linkage Analysis V Date: 10/03/02  Least squares  An EM algorithm  Simulated distribution  Marker coverage and density.
Computational statistics, lecture3 Resampling and the bootstrap  Generating random processes  The bootstrap  Some examples of bootstrap techniques.
Ka-fu Wong © 2003 Chap 6- 1 Dr. Ka-fu Wong ECON1003 Analysis of Economic Data.
1 Chapter 8: Model Inference and Averaging Presented by Hui Fang.
Stochastic Error Functions I: Another Composed Error Lecture X.
BIOL 582 Lecture Set 2 Inferential Statistics, Hypotheses, and Resampling.
The inference and accuracy We learned how to estimate the probability that the percentage of some subjects in the sample would be in a given interval by.
Bootstrapping James G. Anderson, Ph.D. Purdue University.
Benchmarking for Improved Water Utility Performance.
Estimating standard error using bootstrap
Inference: Conclusion with Confidence
Computer Simulation Henry C. Co Technology and Operations Management,
Inference: Conclusion with Confidence
Chapter 8: Inference for Proportions
CHAPTER 29: Multiple Regression*
Confidence Intervals Tobias Econ 472.
Bootstrap - Example Suppose we have an estimator of a parameter and we want to express its accuracy by its standard error but its sampling distribution.
BOOTSTRAPPING: LEARNING FROM THE SAMPLE
Stochastic Frontier Models
Ch13 Empirical Methods.
Confidence Intervals Tobias Econ 472.
CHAPTER 12 More About Regression
Bootstrapping and Bootstrapping Regression Models
How Confident Are You?.
Presentation transcript:

Efficiency and Productivity Measurement: Bootstrapping DEA Scores D.S. Prasada Rao School of Economics The University of Queensland, Australia

Measures of Reliability for DEA Scores As DEA is a non-parametric and non-stochastic approach, efficiency scores from DEA have been treated as non-stochastic. However, there are attempts to see how DEA scores are affected by changes in data – mainly to see the effect of outliers. Simar and Wilson have been working on the problem of generating standard errors for DEA scores using “bootstrap” technique. An alternative to the bootstrap technique is the technique of “jackknife” which is a simpler technique.

Jackknife Technique Run DEA and get efficiency scores for each of the DMUs in the data set. Drop one DMU at a time and use the remaining data to compute DEA scores for the remaining DMUs. Repeat this until the full sample is covered. At this stage, we will have M-1 efficiency scores for each of the M DMUs in the sample. Compute standard deviation for each of the efficiency scores using M-1 different estimates. This is a fairly mechanical procedure, but provides an indication about the presence of outliers – in such cases dropping a DMU may change the scores significantly.

THE DEA BOOTSTRAP Monte Carlo simulation experiments are often used to estimate the sampling distributions of econometric estimators. Such experiments typically involve several steps: Specify a data generating process (DGP) Use the DGP to generate data (i.e., simulate). Apply the estimator to the generated data. Repeat from Step 2. The distribution of the estimates obtained in step 3 approximates the sampling distribution of the estimator. The bootstrap is a form of Monte Carlo experiment where the DGP is unknown.

Alternative DEA Bootstrap Methods Methods for conducting a DEA bootstrap have been suggested by Ferrier and Hirschberg (1997) Lothgren and Tambour (1997) Simar and Wilson (1998) We only discuss the Lothgren-Tambour (LT) method because Simar and Wilson (1997) identify theoretical problems with the Ferrier-Hirschberg (FH) method. Lothgren (1998) provides evidence that the LT method outperforms the Simar-Wilson (SW) method. the LT method is relatively straightforward.

The DGP Let us consider input-oriented DEA models where the output vectors q1, …, qI are treated as fixed. We need to specify a DGP that will allow us to generate data on x1, …, xI. Let Then is a technically-efficient input combination capable of producing qi. Suppose the process generating the distances for all firms is Then a DGP for x1, …, xI is completely characterised by q1, …, qI and F.

. . Example ρ2 = 2 (x2/q) * x2 = ρ2x2 = (2, 4) * x2 = (1, 2) q = 1 5 . * x2 = ρ2x2 = (2, 4) ρ2 = 2 4 3 . * x2 = (1, 2) 2 1 q = 1 1 2 3 4 5 (x1/q)

Estimating the DGP Let denote the DEA estimate of ρi (computed as the inverse of the optimised value of the DEA objective function). We estimate by projecting xi onto the estimated frontier: i = 1, …, I, We estimate F using the empirical distribution function (EDF) of the

Example cont. (x2/q) 5 . x2 = (2, 4) 4 . 3 2 q = 1 1 1 2 3 4 5 (x1/q)

The Bootstrap Algorithm To obtain B bootstrap samples: Use the observed data to estimate the input-oriented DEA model, and project the observed data points onto the frontier using Set b = 1. Draw independently from and generate the bootstrap sample using Use the bootstrap sample to estimate the DEA frontier. Set b = b + 1. Repeat from Step 2 until b = B. These B bootstrap samples can be used to construct confidence intervals.

Example cont. In the hospital example and To illustrate generation of the first bootstrap sample, suppose 4 drawings from the U(0,1) distribution happen to be 0.46, 0.76, 0.18 and 0.92. This implies and We then solve the DEA problem using this data.

Bias and SE’s for DEA Scores Let be the computed DEA score for firm i in the sample. Suppose be the scores generated from the bootstrapped sampling procedure which is conducted B times. Then we can compute bias and SE as:

Some remarks It is a computationally intensive exercise to compute bias and standard errors for DEA scores but the idea is quite simple. The analytical aspects involved in proving that the bootstrapped bias and standard errors are consistent are quite difficult. That is where much of the work is focused. The model we have looked at simply generates technical efficiency scores using a simple random sample without replacement – this ignores any firm-specific characteristics that may drive inefficiencies. It may be possible to make use of a second stage regression and residuals from the regression to bootstrap after taking into account firm specific characteristics.