Foundations of stated preference elicitation : consumer behavior and choice-based conjoint analysis
著者
書誌事項
Foundations of stated preference elicitation : consumer behavior and choice-based conjoint analysis
(Foundations and trends in econometrics, 10:1-2)
Now, c2019
- : pbk
大学図書館所蔵 全2件
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注記
Includes bibliographical references (p. 131-151)
内容説明・目次
内容説明
Foundations of Stated Preferences Elicitation provides the reader with stated preference data collection methods, discrete choice models, and statistical analysis tools that can be used to forecast demand and assess welfare impacts for new or modified products or services in real markets, and summarize the conditions under which the reliability of these methods has been demonstrated or can be tested. One focus is the collection of preference and related data from consumer responses in hypothetical choice experiments, particularly conjoint analysis methods that have proven useful in market research. Another is the economic theory and statistical analysis of choice behavior, revealed or stated, and an economic framework for forecasting market demand and measuring consumer welfare. The treatment is informed by and benefits from experiments on perceptions and decision-making behavior in cognitive science and behavioral economics, and includes methods that can accommodate features of consumer choice that impact forecast reliability such as anchoring, adaptation to the status quo, and sensitivity to context. However, the authors' emphasis is on forecasting tools developed from traditional economic consumer theory and does not touch on the implications of behavioral consumer theory for demand forecasting.
目次
Preface
1. Some History of Stated Preference Elicitation
2. Choice-Based Conjoint (CBC) Analysis
3. Choice Behavior
4. Choice Model Estimation and Forecasting with CBC Data
5. Maximum Simulated Likelihood (MSL) Analysis of CBC Data
6. Hierarchical Bayes Estimation
7. An Empirical CBC Study Using MSL and HB Methods
8. An Application with Inter and Intra-consumer Heterogeneity
9. Policy Analysis
10. Conclusions
Appendix
Acknowledgements
References
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