Welcome to P K Kelkar Library, Online Public Access Catalogue (OPAC)

Normal view MARC view ISBD view

Modeling Data Irregularities and Structural Complexities in Data Envelopment Analysis

Contributor(s): Zhu, Joe [editor.] | Cook, Wade D [editor.] | SpringerLink (Online service).
Material type: materialTypeLabelBookPublisher: Boston, MA : Springer US, 2007.Description: VIII, 334 p. 60 illus. online resource.Content type: text Media type: computer Carrier type: online resourceISBN: 9780387716077.Subject(s): Business | Management science | Operations research | Decision making | Mathematical optimization | Econometrics | Public finance | Business and Management | Operation Research/Decision Theory | Optimization | Public Economics | Econometrics | Business and Management, general | Operations Research, Management ScienceDDC classification: 658.40301 Online resources: Click here to access online
Contents:
Data Irregularities And Structural Complexities In Dea -- Rank Order Data In Dea -- Interval And Ordinal Data -- Variables With Negative Values In Dea -- Non-Discretionary Inputs -- DEA with Undesirable Factors -- European Nitrate Pollution Regulation and French Pig Farms’ Performance -- PCA-DEA -- Mining Nonparametric Frontiers -- DEA Presented Graphically Using Multi-Dimensional Scaling -- DEA Models For Supply Chain or Multi-Stage Structure -- Network DEA -- Context-Dependent Data Envelopment Analysis and its Use -- Flexible Measures–Classifying Inputs and Outputs -- Integer Dea Models -- Data Envelopment Analysis With Missing Data -- Preparing Your Data for DEA.
In: Springer eBooksSummary: In a relatively short period of time, Data Envelopment Analysis (DEA) has grown into a powerful quantitative, analytical tool for measuring and evaluating performance. It has been successfully applied to a whole variety of problems in many different contexts worldwide. The analysis of an array of these problems has been resistant to other methodological approaches because of the multiple levels of complexity that must be considered. Several examples of multifaceted problems in which DEA analysis has been successfully used are: (1) maintenance activities of US Air Force bases in geographically dispersed locations, (2) policy force efficiencies in the United Kingdom, (3) branch bank performances in Canada, Cyprus, and other countries and (4) the efficiency of universities in performing their education and research functions in the U.S., England, and France. In addition to localized problems, DEA applications have been extended to performance evaluations of 'larger entities' such as cities, regions, and countries. These extensions have a wider scope than traditional analyses because they include "social" and "quality-of-life" dimensions which require the modeling of qualitative and quantitative data in order to analyze the layers of complexity for an evaluation of performance and to provide solution strategies. DEA is computational at its core and this book by Zhu and Cook deals with the micro aspects of handling and modeling data issues in modeling DEA problems. DEA's use has grown with its capability of dealing with complex "service industry" and the "public service domain" types of problems that require modeling both qualitative and quantitative data. It is a handbook treatment dealing with specific data problems including the following: (1) imprecise data, (2) inaccurate data, (3) missing data, (4) qualitative data, (5) outliers, (6) undesirable outputs, (7) quality data, (8) statistical analysis, (9) software and other data aspects of modeling complex DEA problems. In addition, the book demonstrates how to visualize DEA results when the data is more than 3-dimensional, and how to identify efficiency units quickly and accurately.
    average rating: 0.0 (0 votes)
Item type Current location Call number Status Date due Barcode Item holds
E books E books PK Kelkar Library, IIT Kanpur
Available EBK6962
Total holds: 0

Data Irregularities And Structural Complexities In Dea -- Rank Order Data In Dea -- Interval And Ordinal Data -- Variables With Negative Values In Dea -- Non-Discretionary Inputs -- DEA with Undesirable Factors -- European Nitrate Pollution Regulation and French Pig Farms’ Performance -- PCA-DEA -- Mining Nonparametric Frontiers -- DEA Presented Graphically Using Multi-Dimensional Scaling -- DEA Models For Supply Chain or Multi-Stage Structure -- Network DEA -- Context-Dependent Data Envelopment Analysis and its Use -- Flexible Measures–Classifying Inputs and Outputs -- Integer Dea Models -- Data Envelopment Analysis With Missing Data -- Preparing Your Data for DEA.

In a relatively short period of time, Data Envelopment Analysis (DEA) has grown into a powerful quantitative, analytical tool for measuring and evaluating performance. It has been successfully applied to a whole variety of problems in many different contexts worldwide. The analysis of an array of these problems has been resistant to other methodological approaches because of the multiple levels of complexity that must be considered. Several examples of multifaceted problems in which DEA analysis has been successfully used are: (1) maintenance activities of US Air Force bases in geographically dispersed locations, (2) policy force efficiencies in the United Kingdom, (3) branch bank performances in Canada, Cyprus, and other countries and (4) the efficiency of universities in performing their education and research functions in the U.S., England, and France. In addition to localized problems, DEA applications have been extended to performance evaluations of 'larger entities' such as cities, regions, and countries. These extensions have a wider scope than traditional analyses because they include "social" and "quality-of-life" dimensions which require the modeling of qualitative and quantitative data in order to analyze the layers of complexity for an evaluation of performance and to provide solution strategies. DEA is computational at its core and this book by Zhu and Cook deals with the micro aspects of handling and modeling data issues in modeling DEA problems. DEA's use has grown with its capability of dealing with complex "service industry" and the "public service domain" types of problems that require modeling both qualitative and quantitative data. It is a handbook treatment dealing with specific data problems including the following: (1) imprecise data, (2) inaccurate data, (3) missing data, (4) qualitative data, (5) outliers, (6) undesirable outputs, (7) quality data, (8) statistical analysis, (9) software and other data aspects of modeling complex DEA problems. In addition, the book demonstrates how to visualize DEA results when the data is more than 3-dimensional, and how to identify efficiency units quickly and accurately.

There are no comments for this item.

Log in to your account to post a comment.

Powered by Koha