FEAR: A Software Package for Frontier Efficiency Analysis with R
|
|
|
- Samuel Carpenter
- 10 years ago
- Views:
Transcription
1 FEAR: A Software Package for Frontier Efficiency Analysis with R Paul W. Wilson The John E. Walker Department of Economics, 222 Sirrine Hall, Clemson University, Clemson, South Carolina USA Abstract This paper describes a software package for computing nonparametric efficiency estimates, making inference, and testing hypotheses in frontier models. Commands are provided for bootstrapping as well as computation of some new, robust estimators of efficiency, etc. JEL classification: C14; C15; C44 Key words: nonparametric; DEA; efficiency; software; benchmarking 1 Introduction An extensive literature on measurement of efficiency in production has evolved from the pioneering work of Debreu [1] and Farrell [2]. A large part of this literature uses linear-programming based measures of efficiency along the lines of Charnes et al. [3] and Färe et al. [4]; these methods have been termed Data Envelopment Analysis (DEA). address: [email protected] (Paul W. Wilson). URL: // (Paul W. Wilson). Preprint submitted to Elsevier 4 December 2006
2 Gattoufi et al. [5] cite more than 1,800 articles on DEA published in more than 490 refereed journals. DEA and similar non-parametric estimators offer numerous advantages, the most obvious being that one need not specify a (potentially erroneous) functional relationship between production inputs and outputs. Until very recently the nonparametric efficiency literature has ignored statistical issues such as inference, hypothesis testing, etc. However, statistical inference and hypothesis testing are now possible with DEA and other nonparametric efficiency estimators due to results surveyed by Simar and Wilson ([6], [7]). Standard software packages (e.g., LIMDEP, STATA, TSP) used by econometricians do not include procedures for DEA or other nonparametric efficiency estimators. Several specialized, commercial software packages are available, as well as a small number of non-commercial, free-ware programs; these have been reviewed by Hollingsworth ([8], [9], [10]), and Barr [11]. Academic versions of the commercial packages range in price from about US$280 to US$1500 at current exchange rates. To varying degrees, the existing packages perform well the tasks they were designed for. Each includes facilities for reading data into the program, in some cases in a variety of formats, and procedures for estimating models that the authors have programmed into their software. A common complaint heard among practitioners, however, runs along the lines of package XYZ will not let me estimate the model I want! The existing packages are designed for ease of use (again, with varying degrees of success), but at a cost inflexibility, limiting the user to models and procedures the authors have explicitly made available. Moreover, none of the existing packages include procedures for statistical inference. Although the asymptotic distribution of DEA estimators is now known (see Kneip et al., 2003, for details) for the general case with p inputs and q outputs, bootstrap methods remain the only useful approach for inference. Yet, none of the existing packages include procedures for bootstrapping in frontier models. Similarly, none of the existing packages provide procedures for the newly-developed robust alternatives to DEA surveyed in Simar and Wilson [7]. FEAR consists of a software library that can be linked to the general-purpose statistical package R. The routines included in FEAR allow the user to compute DEA estimates of technical, allocative, and overall efficiency while assuming either variable, non-increasing, or constant returns to scale. The routines are highly flexible, allowing measurement of efficiency of one group of observations relative to a technology defined by a second, reference group of observations. Consequently, the routines can be used to compute estimates of Malmquist indices and their components in any of the decompositions that have been proposed, scale efficiency measures, super-efficiency scores along the lines of Andersen and Petersen [12], and other measures that might be of 2
3 interest. Commands are also included to facilitate implementation of the bootstrap methods described by Simar and Wilson ([13], [14]); in particular, FEAR s boot.sw98 command can be used to implement the homogeneous bootstrap algorithm described by Simar and Wilson [13]; some programming using commands in FEAR and R are is required when using the current version of FEAR to implement the heterogeneous bootstrap algorithm described by Simar and Wilson [14]. Commands in FEAR can also be combined to implement statistical tests for irrelevant inputs and outputs or aggregation possibilities as described in Simar and Wilson [15], statistical tests of constant returns to scale versus non-increasing or varying returns to scale as described in Simar and Wilson [16], or the iterated bootstrap procedure described in Simar and Wilson [17]. 1 A routine for maximum likelihood estimation of a truncated regression model is included for regressing DEA efficiency estimates on environmental variables as described in Simar and Wilson [21]. In addition, FEAR includes commands to estimate Malmquist indices are various decompositions of Malmquist indices, with an implementation of the bootstrap algorithm for described by Simar and Wilson [22]; to compute free-disposal hull (FDH) efficiency estimates (Deprins et al. [23]); to perform outlier analysis using the methods of Wilson [24]; to compute the new, robust, root-n consistent orderm efficiency estimators described by Cazals et al. [25]; and to compute DEA estimates of cost, revenue, and profit efficiency. A number of these features are unavailable in existing software packages. 2 Where to Get FEAR and R R is a language and environment for statistical computing graphics. It is an implementation of the S language developed at Bell Laboratories, but unlike the commercial version of S marketed as S-Plus by Lucent Technologies, R is freely available under the Free Software Foundation s GNU General Public License. According to the R project s web pages ( R provides a wide variety of statistical... and graphical techniques, and 1 The statistical tests described by Simar and Wilson ([15], [16]) do not depend on dubious assumptions of distributions of efficiency scores. Banker [18] and Banker and Natarajan [19] proposed statistics for testing various hypotheses in DEA applications, with critical values chosen either from F-distributions, but the results of Kneip et al. [20] make clear that the statistics proposed by Banker cannot have F distributions. Banker [18] and Banker and Natarajan [19] also proposed Kolmogorov Smirnov tests based on DEA efficiency estimates, but without taking into account the dependence among these estimates discussed by Simar and Wilson [21]. 3
4 is highly extensible... One of R s strengths is the ease with which welldesigned publication-quality plots can be produced, including mathematical symbols and formulae where needed... R is an integrated suite of software facilities for data manipulation, calculation and graphical display. It includes (i) an effective data handling and storage facility; (ii) a suite of operators for calculations on arrays, in particular matrices; (iii) a large, coherent, integrated collection of intermediate tools for data analysis; (iv) graphical facilities for data analysis and display either on-screen or on hard copy; and (v) a well-developed, simple and effective programming language which includes conditionals, loops, user-defined recursive functions and input and output facilities. R includes an on-line help facility and extensive documentation in the form of manuals included with the package. In addition, several books describing uses of R are available (eg., Dalgaard [26]; Venables and Ripley [27]; and Verzani [28]); see also the recent review by Racine and Hyndman [29]. The current version of R can be downloaded from Precompiled binary versions are available for a variety of platforms; at present, however, FEAR is being made available only for the Microsoft Windows (XP and later) operating systems running on Intel (and clone) machines. After downloading and installing R, FEAR can be downloaded from the following URL: Software/FEAR/fear.html A Command Reference and User s Guide can also be downloaded from this site; the User s Guide gives instructions for installing FEAR into R, as well as a number of examples illustrating some of the capabilities of FEAR. The web site also contains licensing information; while use of FEAR is free for academic purposes, potential government, commercial, or other users outside an educational institution should contact the author before using the FEAR software. The current version of FEAR (at the time of this writing) is 1.0; as features are added and modifications are made, new versions will be released (with higher version numbers). Every attempt will be made to maintain backwardcompatibility with earlier versions of FEAR, and versions prior to the current release will remain available for some time. 3 Using FEAR and R Once R and FEAR have been downloaded and installed, R s graphical user interface (GUI) can be started by clicking on the desktop R icon; commands 4
5 are typed at a prompt in the RConsole window contained within the RGui window. After installing FEAR, R s on-line help facility can be used to find documentation on the commands implemented in FEAR, as shown in Figure 1. Clicking on a command name displays a page giving details on use of the command, including arguments that must be passed, optional arguments and any defaults, etc., as well as a detailed description of what is returned by the command. FEAR includes data that can be used to illustrate the library s capabilities. First, the command library(fear) must be typed in the RConsole window to load the FEAR library, as shown in Figure 2. One might then type help(ccr) to learn that the Charnes et al. [30] data contain 5 inputs used to produce 3 outputs among 70 schools. The following commands load these data and then organize the input vectors in a (5 70) matrix and the output vectors in a (3 70) matrix: data(ccr) x=t(matrix(c(ccr$x1,ccr$x2,ccr$x3,ccr$x4,ccr$x5), nrow=70,ncol=5)) y=t(matrix(c(ccr$y1,ccr$y2,ccr$y3),nrow=70,ncol=5)) The following commands reproduce the outlier analysis in Wilson [24]: tmp=ap(x,y,ndel=12) windows() ap.plot(ratio=tmp$ratio) The resulting plot is shown in Figure 4. Next, Shephard [31] output-distance function estimates can be computed: d.out=dea(x,y,orientation=2) R s summary command summary(d.out) gives summary statistics on the estimates. Alternatively, the summary command can be combined with the ifelse statement to obtain summary statistics on the distance function estimates that are different from unity: summary(ifelse(d.out==1,na,d.out)) as shown in Figure 3. FEAR s show.dens command can be used to produce plots of kernel density estimates for the distance function estimates contained in d.in and d.out; the necessary bandwidth parameters can be obtained with FEAR s eff.bw command: 5
6 h=eff.bw(d.out) show.dens(dist=d.out,bw=h, XLAB="output distance function estimates") The resulting plots are shown in Figure 5; here, they have been drawn on the user s screen, but alternatively, R s postscript command can be used to write postscript code for the plots to a file for inclusion in a manuscript, etc. The show.dens command uses a reflection method to avoid inconsistency problems for the kernel density estimator and the lower (upper) boundary 1 for the input (output) efficiency estimates. The command boot.sw98 implements the bootstrap algorithm described by Simar and Wilson [13]; this command can be used to estimate 95-percent confidence intervals for the input distance functions corresponding to each observation in the Charnes et al. [30] data by typing result=boot.sw98(xobs=x,yobs=y,dhat=d.out,orientation=2) The following command will produce L A TEX code for a table displaying results from the last command; the first column contains the observation number, the second column contains the input distance function estimates, while the third and fourth columns contain the lower and upper bounds of the estimated confidence intervals: tmp=paste(c(1:70),"&",d.in,"&", result$conf.int[,1],"&", result$conf.int[,2],"\\",sep=" ") 4 Concluding Remarks FEAR is a very flexible, extensible package unlike any currently available for estimation of productivity and efficiency. The cost of this flexibility is that the user must type commands at a command-line prompt; for some, this may be unsatisfactory. For others, however, FEAR will be a useful tool, allowing one to estimate quantities that have not been explicitly programmed into other packages, and that have perhaps not been anticipated by this or other authors. In addition to the commands illustrated above, the current version FEAR includes commands to compute DEA estimates of cost, revenue, and profit efficiency, Malmquist indices and various decompositions, and order-m efficiency estimates. 6
7 References [1] G. Debreu, The coefficient of resource utilization, Econometrica 19 (1951) [2] M. Farrell, The measurement of productive efficiency, Journal of the Royal Statistical Society A 120 (1957) [3] A. Charnes, W. Cooper, E. Rhodes, Measuring the inefficiency of decision making units, European Journal of Operational Research 2 (1978) [4] R. Färe, S. Grosskopf, C. Lovell, The Measurement of Efficiency of Production, Kluwer-Nijhoff Publishing, Boston, [5] S. Gattoufi, M. Oral, A. Reisman, Data envelopment analysis literature: A bibliography update ( ), Socio-Economic Planning Sciences 38 (2004) [6] L. Simar, P. Wilson, Statistical inference in nonparametric frontier models: The state of the art, Journal of Productivity Analysis 13 (2000) [7] L. Simar, P. Wilson, Statistical inference in nonparametric frontier models: Recent developments and perspectives, in: H. Fried, C. Lovell, S. Schmidt (Eds.), The Measurement of Productive Efficiency, 2nd Edition, Oxford University Press, Oxford, 2007, Ch. 4, forthcoming. [8] B. Hollingsworth, A review of data envelopment analysis software, Economic Journal 107 (1997) [9] B. Hollingsworth, Data envelopment analysis and productivity analysis: A review of the options, Economic Journal 109 (1999) F458 F462. [10] B. Hollingsworth, Non parametric efficiency measurement, Economic Journal 114 (2004) F307 F311. [11] R. Barr, DEA software tools and technology, in: W. Cooper, L. Seiford, J. Zhu (Eds.), Handbook on Data Envelopment Analysis, Kluwer Academic Publishers, Boston, 2004, pp [12] P. Andersen, N. Petersen, A procedure for ranking efficient units in data envelopment analysis, Management Science 39 (1993) [13] L. Simar, P. Wilson, Sensitivity analysis of efficiency scores: How to bootstrap in nonparametric frontier models, Management Science 44 (1998) [14] L. Simar, P. Wilson, A general methodology for bootstrapping in nonparametric frontier models, Journal of Applied Statistics 27 (2000) [15] L. Simar, P. Wilson, Testing restrictions in nonparametric efficiency models, Communications in Statistics 30 (2001) [16] L. Simar, P. Wilson, Nonparametric tests of returns to scale, European Journal of Operational Research 139 (2001)
8 [17] L. Simar, P. Wilson, Performance of the bootstrap for DEA estimators and iterating the principle, in: W. Cooper, L. Seiford, J. Zhu (Eds.), Handbook on Data Envelopment Analysis, Kluwer Academic Publishers, Inc., New York, 2004, Ch. 10, pp [18] R. Banker, Hypothesis tests using data envelopment analysis, Journal of Productivity Analysis 7 (1996) [19] R. Banker, R. Natarajan, Statistical tests based on dea efficiency scores, in: W. Cooper, L. Seiford, J. Zhu (Eds.), Handbook on Data Envelopment Analysis, Kluwer Academic Publishers, Inc., New York, 2004, Ch. 11, pp [20] A. Kneip, L. Simar, P. Wilson, Asymptotics for DEA estimators in nonparametric frontier models, discussion paper #0317, Institut de Statistique, Université Catholique de Louvain, Louvain-la-Neuve, Belgium (2003). [21] L. Simar, P. Wilson, Estimation and inference in two-stage, semi-parametric models of productive efficiency, Journal of Econometrics 136 (2007) [22] L. Simar, P. Wilson, Estimating and bootstrapping Malmquist indices, European Journal of Operational Research 115 (1999) [23] D. Deprins, L. Simar, H. Tulkens, Measuring labor inefficiency in post offices, in: M. M. P. Pestieau, H. Tulkens (Eds.), The Performance of Public Enterprises: Concepts and Measurements, North-Holland, Amsterdam, 1984, pp [24] P. Wilson, Detecting outliers in deterministic nonparametric frontier models with multiple outputs, Journal of Business and Economic Statistics 11 (1993) [25] C. Cazals, J. Florens, L. Simar, Nonparametric frontier estimation: A robust approach, Journal of Econometrics 106 (2002) [26] P. Dalgaard, Introductory Statistics with R, Springer-Verlag, Inc., New York, [27] W. Venables, B. Ripley, Modern Applied Statistics with S, Springer-Verlag, Inc., New York, [28] J. Verzani, Using R for Introductory Statistics, Chapman and Hall, London, [29] J. Racine, R. Hyndman, Using R to teach econometrics, Journal of Applied Econometrics 17 (2002) [30] A. Charnes, W. Cooper, E. Rhodes, Evaluating program and managerial efficiency: An application of data envelopment analysis to program follow through, Management Science 27 (1981) [31] R. Shephard, Theory of Cost and Production Functions, Princeton University Press, Princeton,
9 Paul W. Wilson ( FEAR: A Software Package for Frontier Efficiency Analysis with R ) is Professor of Economics, Department of Economics, Clemson University, Clemson, South Carolina. He is an Editor of the Journal of Productivity Analysis and has held visiting positions at the Federal Reserve Bank of St. Louis and the Institut de Statistique, Université Catholique de Louvain, Louvain-la-Neuve, Belgium. He receive a Ph.D. in Economics from Brown University. Prof. Wilson s research interests include econometrics (both theoretical and applied), banking, health care, and urban transportation. His work has appeared in a variety of journals, including Journal of Econometrics, Review of Economics and Statistics, Journal of Applied Econometrics, Journal of Monetary Economics, Econometric Thoery, Management Science, and Journal of Urban Economics. 9
10 Fig. 1. List of commands in the FEAR package 10
11 Fig. 2. The R graphical user interface 11
12 Fig. 3. Output from R s summary command 12
13 Fig. 4. Plots produced by the ap.plot command 13
14 Fig. 5. Kernel density plots produced by the show.dens command 14
FEAR: A Software Package for Frontier Efficiency Analysis with R
FEAR: A Software Package for Frontier Efficiency Analysis with R Paul W. Wilson December 2006 Abstract This paper describes a software package for computing nonparametric efficiency estimates, making inference,
TESTING RESTRICTIONS IN NONPARAMETRIC EFFICIENCY MODELS
COMMUN. STATIST. SIMULA., 30(1), 159 184 (2001) TESTING RESTRICTIONS IN NONPARAMETRIC EFFICIENCY MODELS Léopold Simar 1, and Paul W. Wilson 2, 1 Institut de Statistique, Université Catholique de Louvain,
Comparing the Technical Efficiency of Hospitals in Italy and Germany: Non-parametric Conditional Approach
Comparing the Technical Efficiency of Hospitals in Italy and Germany: Non-parametric Conditional Approach TRACKING REGIONAL VARIATION IN HEALTH CARE Berlin, 4th June 2015 Yauheniya Varabyova, University
Efficiency in Software Development Projects
Efficiency in Software Development Projects Aneesh Chinubhai Dharmsinh Desai University [email protected] Abstract A number of different factors are thought to influence the efficiency of the software
AN ANALYSIS OF EFFICIENCY PATTERNS FOR A SAMPLE OF NORWEGIAN BUS COMPANIES
AN ANALYSIS OF EFFICIENCY PATTERNS FOR A SAMPLE OF NORWEGIAN BUS COMPANIES Torben Holvad Transport Studies Unit, University of Oxford INTRODUCTION In recent years significant progress has been made concerning
Gautam Appa and H. Paul Williams A formula for the solution of DEA models
Gautam Appa and H. Paul Williams A formula for the solution of DEA models Working paper Original citation: Appa, Gautam and Williams, H. Paul (2002) A formula for the solution of DEA models. Operational
Least Squares Estimation
Least Squares Estimation SARA A VAN DE GEER Volume 2, pp 1041 1045 in Encyclopedia of Statistics in Behavioral Science ISBN-13: 978-0-470-86080-9 ISBN-10: 0-470-86080-4 Editors Brian S Everitt & David
A PRIMAL-DUAL APPROACH TO NONPARAMETRIC PRODUCTIVITY ANALYSIS: THE CASE OF U.S. AGRICULTURE. Jean-Paul Chavas and Thomas L. Cox *
Copyright 1994 by Jean-Paul Chavas and homas L. Cox. All rights reserved. Readers may make verbatim copies of this document for noncommercial purposes by any means, provided that this copyright notice
NEW ONLINE COMPUTATIONAL FINANCE CERTIFICATE
NEW ONLINE COMPUTATIONAL FINANCE CERTIFICATE Fall, Winter, and Spring Quarters 2010-11 This new online certificate program is offered by the Department of Applied Mathematics in partnership with the departments
Software Review: ITSM 2000 Professional Version 6.0.
Lee, J. & Strazicich, M.C. (2002). Software Review: ITSM 2000 Professional Version 6.0. International Journal of Forecasting, 18(3): 455-459 (June 2002). Published by Elsevier (ISSN: 0169-2070). http://0-
Service courses for graduate students in degree programs other than the MS or PhD programs in Biostatistics.
Course Catalog In order to be assured that all prerequisites are met, students must acquire a permission number from the education coordinator prior to enrolling in any Biostatistics course. Courses are
Centre for Efficiency and Productivity Analysis
Centre for Efficiency and Productivity Analysis Working Paper Series No. WP08/2010 Efficiency and Technological Change in Health Care Services in Ontario H. Chowdhury, V. Zelenyuk, W. Wodchis, & A. Laporte
Regression Modeling Strategies
Frank E. Harrell, Jr. Regression Modeling Strategies With Applications to Linear Models, Logistic Regression, and Survival Analysis With 141 Figures Springer Contents Preface Typographical Conventions
Measuring the Relative Efficiency of European MBA Programs:A Comparative analysis of DEA, SBM, and FDH Model
Measuring the Relative Efficiency of European MBA Programs:A Comparative analysis of DEA, SBM, and FDH Model Wei-Kang Wang a1, Hao-Chen Huang b2 a College of Management, Yuan-Ze University, [email protected]
Programming Languages & Tools
4 Programming Languages & Tools Almost any programming language one is familiar with can be used for computational work (despite the fact that some people believe strongly that their own favorite programming
A Guide to DEAP Version 2.1: A Data Envelopment Analysis (Computer) Program
A Guide to DEAP Version 2.1: A Data Envelopment Analysis (Computer) Program by Tim Coelli Centre for Efficiency and Productivity Analysis Department of Econometrics University of New England Armidale,
STATISTICA Formula Guide: Logistic Regression. Table of Contents
: Table of Contents... 1 Overview of Model... 1 Dispersion... 2 Parameterization... 3 Sigma-Restricted Model... 3 Overparameterized Model... 4 Reference Coding... 4 Model Summary (Summary Tab)... 5 Summary
DEA implementation and clustering analysis using the K-Means algorithm
Data Mining VI 321 DEA implementation and clustering analysis using the K-Means algorithm C. A. A. Lemos, M. P. E. Lins & N. F. F. Ebecken COPPE/Universidade Federal do Rio de Janeiro, Brazil Abstract
INDIRECT INFERENCE (prepared for: The New Palgrave Dictionary of Economics, Second Edition)
INDIRECT INFERENCE (prepared for: The New Palgrave Dictionary of Economics, Second Edition) Abstract Indirect inference is a simulation-based method for estimating the parameters of economic models. Its
Data Envelopment Analysis
Data Envelopment Analysis Theory and Techniques for Economics and Operations Research SUBHASH C. RAY University of Connecticut PUBLISHED BY THE PRESS SYNDICATE OF THE UNIVERSITY OF CAMBRIDGE The Pitt Building,
Structural Health Monitoring Tools (SHMTools)
Structural Health Monitoring Tools (SHMTools) Getting Started LANL/UCSD Engineering Institute LA-CC-14-046 c Copyright 2014, Los Alamos National Security, LLC All rights reserved. May 30, 2014 Contents
Curriculum Vitae. Han Hong
Curriculum Vitae Han Hong Address Landau Economics Building Fax: (650) 725-5702 579 Serra Mall Web: www.stanford.edu/ doubleh Stanford, CA 94305-6072 Academic positions Stanford University, Department
Why High-Order Polynomials Should Not be Used in Regression Discontinuity Designs
Why High-Order Polynomials Should Not be Used in Regression Discontinuity Designs Andrew Gelman Guido Imbens 2 Aug 2014 Abstract It is common in regression discontinuity analysis to control for high order
SAS Software to Fit the Generalized Linear Model
SAS Software to Fit the Generalized Linear Model Gordon Johnston, SAS Institute Inc., Cary, NC Abstract In recent years, the class of generalized linear models has gained popularity as a statistical modeling
Calculating the Probability of Returning a Loan with Binary Probability Models
Calculating the Probability of Returning a Loan with Binary Probability Models Associate Professor PhD Julian VASILEV (e-mail: [email protected]) Varna University of Economics, Bulgaria ABSTRACT The
http://dx.doi.org/10.1090/psapm/023 PROCEEDINGS OF SYMPOSIA IN APPLIED MATHEMATICS Volume XXIII MODERN STATISTICS: METHODS AND APPLICATIONS
http://dx.doi.org/10.1090/psapm/023 PROCEEDINGS OF SYMPOSIA IN APPLIED MATHEMATICS Volume XXIII MODERN STATISTICS: METHODS AND APPLICATIONS AMERICAN MATHEMATICAL SOCIETY PROVIDENCE, RHODE ISLAND 1980 LECTURE
Forecasting Bank Failure: A Non-Parametric Frontier Estimation Approach
Forecasting Bank Failure: A Non-Parametric Frontier Estimation Approach Richard S. Barr Dept. Computer Science and Engineering Southern Methodist University Dallas, TX 75275 USA Lawrence M. Seiford Industrial
Handling attrition and non-response in longitudinal data
Longitudinal and Life Course Studies 2009 Volume 1 Issue 1 Pp 63-72 Handling attrition and non-response in longitudinal data Harvey Goldstein University of Bristol Correspondence. Professor H. Goldstein
The efficiency of fleets in Serbian distribution centres
The efficiency of fleets in Serbian distribution centres Milan Andrejic, Milorad Kilibarda 2 Faculty of Transport and Traffic Engineering, Logistics Department, University of Belgrade, Belgrade, Serbia
EMMANUEL THANASSOULIS CURRICULUM VITAE EXTRACT - DATED 04/03/2013
EMMANUEL THANASSOULIS CURRICULUM VITAE EXTRACT - DATED 04/03/2013 PERSONAL DETAILS Address: Office: Operations and Information Management, Aston Business School, University of Aston, Birmingham B4 7ET.
EMS: Efficiency Measurement System User s Manual
EMS: Efficiency Measurement System User s Manual Holger Scheel Version 1.3 2000-08-15 Contents 1 Introduction 2 2 Preparing the input output data 2 2.1 Using MS Excel files..............................
Statistics Graduate Courses
Statistics Graduate Courses STAT 7002--Topics in Statistics-Biological/Physical/Mathematics (cr.arr.).organized study of selected topics. Subjects and earnable credit may vary from semester to semester.
COMPUTATIONS IN DEA. Abstract
ISSN 0101-7438 COMPUTATIONS IN DEA José H. Dulá School of Business Administration The University of Mississippi University MS 38677 E-mail: [email protected] Received November 2001; accepted October 2002
WESTMORELAND COUNTY PUBLIC SCHOOLS 2011 2012 Integrated Instructional Pacing Guide and Checklist Computer Math
Textbook Correlation WESTMORELAND COUNTY PUBLIC SCHOOLS 2011 2012 Integrated Instructional Pacing Guide and Checklist Computer Math Following Directions Unit FIRST QUARTER AND SECOND QUARTER Logic Unit
Package Benchmarking
Type Package Package Benchmarking July 8, 2015 Title Benchmark and Frontier Analysis Using DEA and SFA Version 0.26 Date 2015-7-8 ($Date: 2015-07-08 12:32:10 +0200 (on, 08 jul 2015) $) Author Peter Bogetoft
Introduction to R Statistical Software
Introduction to R Statistical Software Anthony (Tony) R. Olsen USEPA ORD NHEERL Western Ecology Division Corvallis, OR 97333 (541) 754-4790 [email protected] What is R? A language and environment for
NON-PARAMETRIC APPROACHES TO EDUCATION AND HEALTH EFFICIENCY IN OECD COUNTRIES ANTÓNIO AFONSO * MIGUEL ST. AUBYN
Journal of Applied Economics. Vol VIII, No. 2 (Nov 2005), 227-246 NON-PARAMETRIC APPROACHES TO EDUCATION AND HEALTH EFFICIENCY 227 NON-PARAMETRIC APPROACHES TO EDUCATION AND HEALTH EFFICIENCY IN OECD COUNTRIES
Technical Efficiency Accounting for Environmental Influence in the Japanese Gas Market
Technical Efficiency Accounting for Environmental Influence in the Japanese Gas Market Sumiko Asai Otsuma Women s University 2-7-1, Karakida, Tama City, Tokyo, 26-854, Japan [email protected] Abstract:
Applications of R Software in Bayesian Data Analysis
Article International Journal of Information Science and System, 2012, 1(1): 7-23 International Journal of Information Science and System Journal homepage: www.modernscientificpress.com/journals/ijinfosci.aspx
F nest. Monte Carlo and Bootstrap using Stata. Financial Intermediation Network of European Studies
F nest Financial Intermediation Network of European Studies S U M M E R S C H O O L Monte Carlo and Bootstrap using Stata Dr. Giovanni Cerulli 8-10 October 2015 University of Rome III, Italy Lecturer Dr.
Assessing Container Terminal Safety and Security Using Data Envelopment Analysis
Assessing Container Terminal Safety and Security Using Data Envelopment Analysis ELISABETH GUNDERSEN, EVANGELOS I. KAISAR, PANAGIOTIS D. SCARLATOS Department of Civil Engineering Florida Atlantic University
MATHEMATICAL METHODS OF STATISTICS
MATHEMATICAL METHODS OF STATISTICS By HARALD CRAMER TROFESSOK IN THE UNIVERSITY OF STOCKHOLM Princeton PRINCETON UNIVERSITY PRESS 1946 TABLE OF CONTENTS. First Part. MATHEMATICAL INTRODUCTION. CHAPTERS
Direct Democracy and Local Government Efficiency
Discussion Paper No. 14-017 Direct Democracy and Local Government Efficiency Zareh Asatryan and Kristof De Witte Discussion Paper No. 14-017 Direct Democracy and Local Government Efficiency Zareh Asatryan
Measuring Information Technology s Indirect Impact on Firm Performance
Information Technology and Management 5, 9 22, 2004 2004 Kluwer Academic Publishers. Manufactured in The Netherlands. Measuring Information Technology s Indirect Impact on Firm Performance YAO CHEN [email protected]
Comparing Improved Versions of K-Means and Subtractive Clustering in a Tracking Application
Comparing Improved Versions of K-Means and Subtractive Clustering in a Tracking Application Marta Marrón Romera, Miguel Angel Sotelo Vázquez, and Juan Carlos García García Electronics Department, University
Confidence Intervals for Cpk
Chapter 297 Confidence Intervals for Cpk Introduction This routine calculates the sample size needed to obtain a specified width of a Cpk confidence interval at a stated confidence level. Cpk is a process
Business Statistics. Successful completion of Introductory and/or Intermediate Algebra courses is recommended before taking Business Statistics.
Business Course Text Bowerman, Bruce L., Richard T. O'Connell, J. B. Orris, and Dawn C. Porter. Essentials of Business, 2nd edition, McGraw-Hill/Irwin, 2008, ISBN: 978-0-07-331988-9. Required Computing
Example: Credit card default, we may be more interested in predicting the probabilty of a default than classifying individuals as default or not.
Statistical Learning: Chapter 4 Classification 4.1 Introduction Supervised learning with a categorical (Qualitative) response Notation: - Feature vector X, - qualitative response Y, taking values in C
Installing R and the psych package
Installing R and the psych package William Revelle Department of Psychology Northwestern University August 17, 2014 Contents 1 Overview of this and related documents 2 2 Install R and relevant packages
DATA MINING TOOL FOR INTEGRATED COMPLAINT MANAGEMENT SYSTEM WEKA 3.6.7
DATA MINING TOOL FOR INTEGRATED COMPLAINT MANAGEMENT SYSTEM WEKA 3.6.7 UNDER THE GUIDANCE Dr. N.P. DHAVALE, DGM, INFINET Department SUBMITTED TO INSTITUTE FOR DEVELOPMENT AND RESEARCH IN BANKING TECHNOLOGY
Software Solutions - 375 - Appendix B. B.1 The R Software
Appendix B Software Solutions This appendix provides a brief discussion of the software solutions available to researchers for computing inter-rater reliability coefficients. The list of software packages
Parallel Computing of Kernel Density Estimates with MPI
Parallel Computing of Kernel Density Estimates with MPI Szymon Lukasik Department of Automatic Control, Cracow University of Technology, ul. Warszawska 24, 31-155 Cracow, Poland [email protected]
7 Time series analysis
7 Time series analysis In Chapters 16, 17, 33 36 in Zuur, Ieno and Smith (2007), various time series techniques are discussed. Applying these methods in Brodgar is straightforward, and most choices are
Simple Predictive Analytics Curtis Seare
Using Excel to Solve Business Problems: Simple Predictive Analytics Curtis Seare Copyright: Vault Analytics July 2010 Contents Section I: Background Information Why use Predictive Analytics? How to use
Practical Time Series Analysis Using SAS
Practical Time Series Analysis Using SAS Anders Milhøj Contents Preface... vii Part 1: Time Series as a Subject for Analysis... 1 Chapter 1 Time Series Data... 3 1.1 Time Series Questions... 3 1.2 Types
Gerald Whitney. Department of Economics and Finance University of New Orleans New Orleans, LA 70148 504-280-6903 [email protected]
Gerald Whitney Department of Economics and Finance University of New Orleans New Orleans, LA 70148 504-280-6903 [email protected] EDUCATION Ph.D. Tulane University, Economics, 1977. Fields: Monetary Theory
DEA IN MUTUAL FUND EVALUATION
DEA IN MUTUAL FUND EVALUATION E-mail: [email protected] Dipartimento di Matematica Applicata Università Ca Foscari di Venezia ABSTRACT - In this contribution we illustrate the recent use of Data Envelopment
INTERPRETING THE ONE-WAY ANALYSIS OF VARIANCE (ANOVA)
INTERPRETING THE ONE-WAY ANALYSIS OF VARIANCE (ANOVA) As with other parametric statistics, we begin the one-way ANOVA with a test of the underlying assumptions. Our first assumption is the assumption of
From the help desk: Bootstrapped standard errors
The Stata Journal (2003) 3, Number 1, pp. 71 80 From the help desk: Bootstrapped standard errors Weihua Guan Stata Corporation Abstract. Bootstrapping is a nonparametric approach for evaluating the distribution
Intro to Data Analysis, Economic Statistics and Econometrics
Intro to Data Analysis, Economic Statistics and Econometrics Statistics deals with the techniques for collecting and analyzing data that arise in many different contexts. Econometrics involves the development
Clustering-Based Method for Data Envelopment Analysis. Hassan Najadat, Kendall E. Nygard, Doug Schesvold North Dakota State University Fargo, ND 58105
Clustering-Based Method for Data Envelopment Analysis Hassan Najadat, Kendall E. Nygard, Doug Schesvold North Dakota State University Fargo, ND 58105 Abstract. Data Envelopment Analysis (DEA) is a powerful
CowLog: Open-source software for coding behaviors from digital video
Behavior Research Methods 2009, 41 (2), 472-476 doi:10.3758/brm.41.2.472 CowLog: Open-source software for coding behaviors from digital video Laura Hänninen and Matti Pastell University of Helsinki, Helsinki,
Comparison of Programs for Fixed Kernel Home Range Analysis
1 of 7 5/13/2007 10:16 PM Comparison of Programs for Fixed Kernel Home Range Analysis By Brian R. Mitchell Adjunct Assistant Professor Rubenstein School of Environment and Natural Resources University
Bootstrapping Big Data
Bootstrapping Big Data Ariel Kleiner Ameet Talwalkar Purnamrita Sarkar Michael I. Jordan Computer Science Division University of California, Berkeley {akleiner, ameet, psarkar, jordan}@eecs.berkeley.edu
Convex Hull Probability Depth: first results
Conve Hull Probability Depth: first results Giovanni C. Porzio and Giancarlo Ragozini Abstract In this work, we present a new depth function, the conve hull probability depth, that is based on the conve
How To Understand The Theory Of Probability
Graduate Programs in Statistics Course Titles STAT 100 CALCULUS AND MATR IX ALGEBRA FOR STATISTICS. Differential and integral calculus; infinite series; matrix algebra STAT 195 INTRODUCTION TO MATHEMATICAL
Stress Test Modeling in Cards Portfolios
Stress Test Modeling in Cards Portfolios José J. Canals-Cerdá The views expressed here are my own and not necessarily those of the Federal Reserve or its staff. Credit Card Performance: Charge-off Rate
Hailong Qian. Department of Economics John Cook School of Business Saint Louis University 3674 Lindell Blvd, St. Louis, MO 63108, USA qianh@slu.
Hailong Qian Department of Economics John Cook School of Business Saint Louis University 3674 Lindell Blvd, St. Louis, MO 63108, USA [email protected] FIELDS OF INTEREST Theoretical and Applied Econometrics,
Abstract. Keywords: Data Envelopment Analysis (DEA), decision making unit (DMU), efficiency, Korea Securities Dealers Automated Quotation (KOSDAQ)
, pp. 205-218 http://dx.doi.org/10.14257/ijseia.2015.9.5.20 The Efficiency Comparative Evaluation of IT Service Companies using the Data Envelopment Analysis Approach Focus on KOSDAQ(KOrea Securities Dealers
Using Mixtures-of-Distributions models to inform farm size selection decisions in representative farm modelling. Philip Kostov and Seamus McErlean
Using Mixtures-of-Distributions models to inform farm size selection decisions in representative farm modelling. by Philip Kostov and Seamus McErlean Working Paper, Agricultural and Food Economics, Queen
From the help desk: Swamy s random-coefficients model
The Stata Journal (2003) 3, Number 3, pp. 302 308 From the help desk: Swamy s random-coefficients model Brian P. Poi Stata Corporation Abstract. This article discusses the Swamy (1970) random-coefficients
R Commander Tutorial
R Commander Tutorial Introduction R is a powerful, freely available software package that allows analyzing and graphing data. However, for somebody who does not frequently use statistical software packages,
Imputing Values to Missing Data
Imputing Values to Missing Data In federated data, between 30%-70% of the data points will have at least one missing attribute - data wastage if we ignore all records with a missing value Remaining data
Analysing The Efficiency Of The Greek Life Insurance Industry
European Research Studies, Volume XI, Issue (3) 2008 Analysing The Efficiency Of The Greek Life Insurance Industry By Maria Rosa Borges i, Milton Nektarios ii and Carlos Pestana Barros iii Abstract: This
This article appeared in a journal published by Elsevier. The attached copy is furnished to the author for internal non-commercial research and
This article appeared in a journal published by Elsevier. The attached copy is furnished to the author for internal non-commercial research and education use, including for instruction at the authors institution
Visualization with OpenDX
Alexey I. Baranov Visualization with OpenDX User s Guide Springer Contents 1 Visualization with OpenDX..................................... 1 1.1 OpenDX module installation.................................
A Stochastic Frontier Model on Investigating Efficiency of Life Insurance Companies in India
A Stochastic Frontier Model on Investigating Efficiency of Life Insurance Companies in India R. Chandrasekaran 1a, R. Madhanagopal 2b and K. Karthick 3c 1 Associate Professor and Head (Retired), Department
Normality Testing in Excel
Normality Testing in Excel By Mark Harmon Copyright 2011 Mark Harmon No part of this publication may be reproduced or distributed without the express permission of the author. [email protected]
Overview of Violations of the Basic Assumptions in the Classical Normal Linear Regression Model
Overview of Violations of the Basic Assumptions in the Classical Normal Linear Regression Model 1 September 004 A. Introduction and assumptions The classical normal linear regression model can be written
