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Affect and Decision Making: Insights and Predictions from Computational Models

Journal

TRENDS IN COGNITIVE SCIENCES
Volume 23, Issue 7, Pages 602-614

Publisher

ELSEVIER SCIENCE LONDON
DOI: 10.1016/j.tics.2019.04.005

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Funding

  1. NIMH NIH HHS [P50 MH094258] Funding Source: Medline

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In recent years interest in integrating the affective and decision sciences has skyrocketed. Immense progress has been made, but the complexities of each field, which can multiply when combined, present a significant obstacle. A carefully defined framework for integration is needed. The shift towards computational modeling in decision science provides a powerful basis and a path forward, but one whose synergistic potential will only be fully realized by drawing on the theoretical richness of the affective sciences. Reviewing research using a popular computational model of choice (the drift diffusion model), we discuss how mapping concepts to parameters reduces conceptual ambiguity and reveals novel hypotheses.

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