Using stated response choice data to enrich revealed preference discrete choice models |
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Authors: | David A. Hensher Mark Bradley |
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Affiliation: | (1) Graduate School of Business, The University of Sydney, 2006, NSW, Australia;(2) Hague Consulting Group, Surinamestraat 4, 2585 GJ The Hague, Netherlands |
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Abstract: | There is growing interest in exploring the view that both revealed preference (RP) and stated preference (SP) data have useful information and that their integration will enrich the overall explanatory power of RP choice models. These two types of data have been independently used in the estimation of a wide variety of discrete choice applications in marketing. In order to combine the two data sources, each with independent choice outcomes, allowance must be made for their different scaling properties. The approach uses a full information maximum likelihood estimation procedure of the hierarchical logit form to obtain suitable scaling parameters to make one or more data sets comparable. We illustrate the advantages of the dual data strategy by comparing the results with those obtained from models estimated independently with RP and SP data. Data collected as part of a study of high speed rail is used to estimate a set of illustrative mode choice models. |
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Keywords: | Conjoint Analysis Revealed Preference Logit Modelling Hierarchical Estimation Scaling Factor |
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