Brain activity of professional investors signals future stock performance

Author:

van Brussel Leonard D.1ORCID,Boksem Maarten A. S.1,Dietvorst Roeland C.2,Smidts Ale1ORCID

Affiliation:

1. Rotterdam School of Management, Department of Marketing Management, Erasmus University, Rotterdam 3062 PA, The Netherlands

2. NN Investment Partners, The Hague 2595 AS, The Netherlands

Abstract

A major aspiration of investors is to better forecast stock performance. Interestingly, emerging “neuroforecasting” research suggests that brain activity associated with anticipatory reward relates to market behavior and population-wide preferences, including stock price dynamics. In this study, we extend these findings to professional investors processing comprehensive real-world information on stock investment options while making predictions of long-term stock performance. Using functional MRI, we sampled investors’ neural responses to investment cases and assessed whether these responses relate to future performance on the stock market. We found that our sample of investors could not successfully predict future market performance of the investment cases, confirming that stated preferences do not predict the market. Stock metrics of the investment cases were not predictive of future stock performance either. However, as investors processed case information, nucleus accumbens (NAcc) activity was higher for investment cases that ended up overperforming in the market. These findings remained robust, even when controlling for stock metrics and investors’ predictions made in the scanner. Cross-validated prediction analysis indicated that NAcc activity could significantly predict future stock performance out-of-sample above chance. Our findings resonate with recent neuroforecasting studies and suggest that brain activity of professional investors may help in forecasting future stock performance.

Publisher

Proceedings of the National Academy of Sciences

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