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Published November 11, 2016 | Supplemental Material + Submitted
Journal Article Open

Neural Evidence of Regret and Its Implications for Investor Behavior

Abstract

We use neural data collected from an experimental asset market to measure regret preferences while subjects trade stocks. When subjects observe a positive return for a stock they chose not to purchase, a regret signal is observed in an area of the brain that is commonly active during reward processing. Subjects are unwilling to repurchase stocks that have recently increased in price, even though this is suboptimal in our experiment. The strength of stock repurchasing mistakes is correlated with the neural measures of regret. Subjects with high rates of repurchasing mistakes also exhibit large disposition effects.

Additional Information

© 2016 The Author. Published by Oxford University Press on behalf of The Society for Financial Studies. Received April 28, 2015; accepted January 26, 2016 by Editor Stefan Nagel. First published online: February 26, 2016. We are grateful for comments from Nicholas Barberis, Phillip Bond, Peter Bossaerts, Campbell Harvey, Milica Mormann, Antonio Rangel, and seminar participants at Caltech, the University of Southern California, the University of Washington, the University of Western Ontario, the 2013 Miami Behavioral Finance Conference, and the 2013 Boulder Consumer Financial Decision-Making Conference. Financial support from the National Science Foundation (Camerer and Frydman) and from the Betty and Gordon Moore Foundation (Camerer) is gratefully acknowledged. Supplementary data can be found on The Review of Financial Studies web site.

Attached Files

Submitted - SSRN-id2600287.pdf

Supplemental Material - Final_regret_APPENDIX.pdf

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August 19, 2023
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