<p><P>New efficiency theory refers to the various parametric and semi-parametric methods of estimating production and cost frontiers, which include data envelopment analysis (DEA) with its diverse applications in management science and operations research. This monograph develops and generalizes the
Extension of Data Envelopment Analysis with Preference Information: Value Efficiency
โ Scribed by Tarja Joro, Pekka J. Korhonen (auth.)
- Publisher
- Springer US
- Year
- 2015
- Tongue
- English
- Leaves
- 196
- Series
- International Series in Operations Research & Management Science 218
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This book provides an introduction to incorporating preference information in Data Envelopment Analysis (DEA) with a special emphasis in Value Efficiency Analysis. In addition to theoretical considerations, numerous illustrative examples are included. Hence, the book can be used as a teaching text as well. Only a modest mathematical background is needed to understand the main principles. The only prerequisites are a) familiarity with linear algebra, especially matrix calculus; b) knowledge of the simplex method; and c) familiarity with the use of computer software.
The book is organized as follows. Chapter 1 provides motivation and introduces the basic concepts. Chapter 2 provides the basic ideas and models of Data Envelopment Analysis. The efficient frontier and production possibility set concepts play an important role in all considerations. That's why these concepts are considered more closely in Chapter 3. Since the approaches introduced in this study are inspired by Multiple Objective Linear Programming, the basic concepts of this field are reviewed in Chapter 4. Chapter 5 also compares and contrasts Data Envelopment Analysis and Multiple Objective Linear Programming, providing some cornerstones for approaches presented later in the book. Chapter 6 discusses the traditional approaches to take into account preference information in DEA. In Chapter 7, Value Efficiency is introduced, and Chapter 8 discusses practical aspects. Some extensions are presented in Chapter 9, and in Chapter 10 Value Efficiency is extended to cover the case when a production possibility set is not convex. Three implemented applications are reviewed in Chapter 11.
โฆ Table of Contents
Front Matter....Pages i-xii
Introduction....Pages 1-14
Data Envelopment Analysis....Pages 15-26
Production Possibility Set and Efficiency....Pages 27-39
Multiple Objective Linear Programming....Pages 41-53
Comparison of Data Envelopment Analysis and Multiple Objective Linear Programming....Pages 55-64
Incorporating Preference Information to Data Envelopment Analysis....Pages 65-93
Value Efficiency Analysis....Pages 95-109
Value Efficiency Analysis in Practice....Pages 111-126
Extensions to Value Efficiency Analysis....Pages 127-146
Non-convex Value Efficiency Analysis....Pages 147-159
Applications of Value Efficiency Analysis....Pages 161-183
Conclusion....Pages 185-185
Back Matter....Pages 187-191
โฆ Subjects
Operation Research/Decision Theory; Production/Logistics/Supply Chain Management; Operations Research, Management Science
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xiv, 245 p. : 23 cm