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How to detect high-performing individuals and groups: Decision similarity predicts accuracy
Author(s) -
Ralf H. J. M. Kurvers,
Stefan M. Herzog,
Ralph Hertwig,
Jens Krause,
Mehdi Moussaïd,
Giuseppe Argenziano,
Iris Zalaudek,
Patricia A. Carney,
Max Wolf
Publication year - 2019
Publication title -
science advances
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.928
H-Index - 146
ISSN - 2375-2548
DOI - 10.1126/sciadv.aaw9011
Subject(s) - similarity (geometry) , computer science , psychology , artificial intelligence , machine learning , image (mathematics)
We select high-performing individuals and groups by looking at how similar individuals’ decisions are to the decisions of others. Distinguishing between high- and low-performing individuals and groups is of prime importance in a wide range of high-stakes contexts. While this is straightforward when accurate records of past performance exist, these records are unavailable in most real-world contexts. Focusing on the class of binary decision problems, we use a combined theoretical and empirical approach to develop and test a approach to this important problem. First, we use a general mathematical argument and numerical simulations to show that the similarity of an individual’s decisions to others is a powerful predictor of that individual’s decision accuracy. Second, testing this prediction with several large datasets on breast and skin cancer diagnostics, geopolitical forecasting, and a general knowledge task, we find that decision similarity robustly permits the identification of high-performing individuals and groups. Our findings offer a simple, yet broadly applicable, heuristic for improving real-world decision-making systems.

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