A Monte Carlo Study of Design Procedures for the Semi-parametric Mixed Logit Model
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DOI: 10.1515/roms-2014-0002
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Keywords
semi-parametric semi-Bayesian mixed logit design; heterogeneity; estimation accuracy; multinomial logit design; D-optimality; entropy;All these keywords.
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