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Baillon, A., Bleichrodt, H. and Spinu, V. (2020). Searching for the reference point Management Science, 66(1):93--112.


  • Affiliated authors
    Aurélien Baillon, Han Bleichrodt, Vitalie Spinu
  • Publication year
    2020
  • Journal
    Management Science

Although reference dependence plays a central role in explaining behavior, little is known about the way reference points are selected. This paper identifies empirically which reference point people use in decision under risk. We assume a comprehensive reference-dependent model that nests the main reference-dependent theories, including prospect theory, and that allows isolating the reference point rule from other behavioral parameters. Our experiment involved high stakes with payoffs up to a week{\textquoteright}s salary. We used an optimal design to select the choices in the experiment and Bayesian hierarchical modeling for estimation. The most common reference points were the status quo and a security level (the maximum of the minimal outcomes of the prospects in a choice). We found little support for the use of expectations-based reference points.