
Estimation of Structural Models Using Experimental Data From the Lab and the Field
Charles Bellemare(Author)
Cambridge University Press
Published on 9. February 2023
Book
Paperback/Softback
82 pages
978-1-009-36263-4 (ISBN)
Description
Behavioral economics provides a rich set of explicit models of non-classical preferences and belief formation which can be used to estimate structural models of decision making. At the same time, experimental approaches allow the researcher to exogenously vary components of the decision making environment. The synergies between behavioral and experimental economics provide a natural setting for the estimation of structural models. This Element will cover examples supporting the following arguments 1) Experimental data allows the researcher to estimate structural models under weaker assumptions and can simplify their estimation, 2) many popular models in behavioral economics can be estimated without any programming skills using existing software, 3) experimental methods are useful to validate structural models. This Element aims to facilitate adoption of structural modelling by providing Stata codes to replicate some of the empirical illustrations that are presented. Examples covered include estimation of outcome-based preferences, belief-dependent preferences and risk preferences.
More details
Series
Language
English
Place of publication
Cambridge
United Kingdom
Product notice
Paperback (trade)
Illustrations
Worked examples or Exercises
Dimensions
Height: 223 mm
Width: 153 mm
Thickness: 10 mm
Weight
135 gr
ISBN-13
978-1-009-36263-4 (9781009362634)
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Charles Bellemare
Estimation of Structural Models Using Experimental Data From the Lab and the Field
E-Book
02/2023
Cambridge University Press
€20.99
Available for download
Person
Content
1. Introduction; 2. A motivating example; 3. Estimation using first-order conditions; 4. Estimation using discrete choice models; 5. Uncertainty in structural models; 6. Model Validation; 7. Conclusion; 8. Online Appendix.