Syracuse University, Masters of Applied Data Science - MAR 653 Marketing Analytics
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Updated
Mar 24, 2020 - HTML
Syracuse University, Masters of Applied Data Science - MAR 653 Marketing Analytics
R package that creates Bayesian I- and D-optimal designs for choice models involving mixtures of ingredient proportions
This is the data and code repository for the article "Autistic traits influence the strategic diversity of information sampling: Insights from two-stage decision models" (published on PLoS Computational Biology).
Code for paper "Bayesian I-optimal designs for choice experiments with mixtures" by Mario Becerra and Peter Goos.
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