| Literature DB >> 34112693 |
Joshua C Peterson1, David D Bourgin2, Mayank Agrawal3,4, Daniel Reichman5, Thomas L Griffiths2,3.
Abstract
Predicting and understanding how people make decisions has been a long-standing goal in many fields, with quantitative models of human decision-making informing research in both the social sciences and engineering. We show how progress toward this goal can be accelerated by using large datasets to power machine-learning algorithms that are constrained to produce interpretable psychological theories. Conducting the largest experiment on risky choice to date and analyzing the results using gradient-based optimization of differentiable decision theories implemented through artificial neural networks, we were able to recapitulate historical discoveries, establish that there is room to improve on existing theories, and discover a new, more accurate model of human decision-making in a form that preserves the insights from centuries of research.Entities:
Year: 2021 PMID: 34112693 DOI: 10.1126/science.abe2629
Source DB: PubMed Journal: Science ISSN: 0036-8075 Impact factor: 47.728