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Replication data for: Making Case-Based Decision Theory Directly Observable

Version
V0
Resource Type
Dataset
Creator
  • Bleichrodt, Han
  • Filko, Martin
  • Kothiyal, Amit
  • Wakker, Peter P.
Publication Date
2017-02-01
Description
  • Abstract

    Case-based decision theory (CBDT) provided a new way of revealing preferences, with decisions under uncertainty determined by similarities with cases in memory. This paper introduces a method to measure CBDT that requires no commitment to parametric families and that relates directly to decisions. Thus, CBDT becomes directly observable and can be used in prescriptive applications. Two experiments on real estate investments demonstrate the feasibility of our method. Our implementation of real incentives not only avoids the income effect, but also avoids interactions between different memories. We confirm CBDT's predictions except for one violation of separability of cases in memory.
Availability
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Relations
  • Is supplement to
    DOI: 10.1257/mic.20150172 (Text)
Publications
  • Bleichrodt, Han, Martin Filko, Amit Kothiyal, and Peter P. Wakker. “Making Case-Based Decision Theory Directly Observable.” American Economic Journal: Microeconomics 9, no. 1 (February 2017): 123–51. https://doi.org/10.1257/mic.20150172.
    • ID: 10.1257/mic.20150172 (DOI)

Update Metadata: 2020-05-18 | Issue Number: 2 | Registration Date: 2019-10-13

Bleichrodt, Han; Filko, Martin; Kothiyal, Amit; Wakker, Peter P. (2017): Replication data for: Making Case-Based Decision Theory Directly Observable. Version: V0. ICPSR - Interuniversity Consortium for Political and Social Research. Dataset. https://doi.org/10.3886/E114343