Embodied sequential sampling models and dynamic neural fields for decision-making: Why hesitate between two when a continuum is the answer - Statistique pour le Vivant et l’Homme
Article Dans Une Revue Neural Networks Année : 2024

Embodied sequential sampling models and dynamic neural fields for decision-making: Why hesitate between two when a continuum is the answer

Résumé

As two alternative options in a forced choice task are separated by design, two classes of computational models of decision-making have thrived independently in the literature for nearly five decades. While sequential sampling models (SSM) focus on response times and keypresses in binary decisions in experimental paradigms, dynamic neural fields (DNF) focus on continuous sensorimotor dimensions and tasks found in perception and robotics. Recent attempts have been made to address limitations in their application to other domains, but strong similarities and compatibility between prominent models from both classes were hardly considered. This article is an attempt at bridging the gap between these classes of models, and simultaneously between disciplines and paradigms relying on binary or continuous responses. A unifying formulation of representative SSM and DNF equations is proposed, varying the number of units which interact and compete to reach a decision. The embodiment of decisions is also considered by coupling cognitive and sensorimotor processes, enabling the model to generate decision trajectories at trial level. The resulting mechanistic model is therefore able to target different paradigms (forced choices or continuous response scales) and measures (final responses or dynamics). The validity of the model is assessed statistically by fitting empirical distributions obtained from human participants in moral decision-making mouse-tracking tasks, for which both dichotomous and nuanced responses are meaningful. Comparing equations at the theoretical level, and model parametrizations at the empirical level, the implications for psychological decision-making processes, as well as the fundamental assumptions and limitations of models and paradigms are discussed.
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Dates et versions

hal-04674484 , version 1 (21-08-2024)

Identifiants

Citer

Jean-Charles Quinton, Flora Gautheron, Annique Smeding. Embodied sequential sampling models and dynamic neural fields for decision-making: Why hesitate between two when a continuum is the answer. Neural Networks, 2024, 179, pp.106526. ⟨10.1016/j.neunet.2024.106526⟩. ⟨hal-04674484⟩
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