Bibliographic Information

Applied choice analysis

David A. Hensher, John M. Rose, William H. Greene

Cambridge University Press, 2015

2nd ed

  • : hbk
  • : pbk

Available at  / 32 libraries

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Note

Previous ed.: 2005

Includes bibliographical references (p. 1128-1162) and index

Description and Table of Contents

Description

The second edition of this popular book brings students fully up to date with the latest methods and techniques in choice analysis. Comprehensive yet accessible, it offers a unique introduction to anyone interested in understanding how to model and forecast the range of choices made by individuals and groups. In addition to a complete rewrite of several chapters, new topics covered include ordered choice, scaled MNL, generalized mixed logit, latent class models, group decision making, heuristics and attribute processing strategies, expected utility theory, and prospect theoretic applications. Many additional case studies are used to illustrate the applications of choice analysis with extensive command syntax provided for all Nlogit applications and datasets available online. With its unique blend of theory, estimation, and application, this book has broad appeal to all those interested in choice modeling methods and will be a valuable resource for students as well as researchers, professionals, and consultants.

Table of Contents

  • Preface
  • Part I. Getting Started: 1. In the beginning
  • 2. Choosing
  • 3. Choice and utility
  • 4. Families of discrete choice models
  • 5. Estimating discrete choice models
  • 6. Experimental design and choice experiments
  • 7. Statistical inference
  • 8. Other matters that analysts often inquire about
  • Part II. Software and Data: 9. Nlogit for applied choice analysis
  • 10. Data set up for Nlogit
  • Part III. The Suite of Choice Models: 11. Getting started modeling: the workhorse - multinominal logit
  • 12. Handling unlabeled discrete choice data
  • 13. Getting more from your model
  • 14. Nested logit estimation
  • 15. Mixed logit estimation
  • 16. Latent class models
  • 17. Binary choice models
  • 18. Ordered choices
  • 19. Combining sources of data
  • Part IV. Advanced Topics: 20. Frontiers of choice analysis
  • 21. Attribute processing, heuristics, and preference construction
  • 22. Group decision making
  • Select glossary
  • References
  • Index.

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