The Pennsylvania State University The Graduate School The Mary Jean and Frank P. Smeal College of Business Administration A HIERARCHICAL BAYESIAN FINITE MIXTURE MULTIDIMENSIONAL SCALING APPROACH FOR ACCOMMODATING STRUCTURAL AND PREFERENCE HETEROGENEITY IN THREE WAY PREFERENCE DATA
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Frank P. Smeal | J. Schafer | W. DeSarbo | A. Rangaswamy | J. Liechty | D. K. Fong | M. Jean | Mary Jean
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