Reframing Cognitive Science as a Complexity Science
- PMID: 37078377
- DOI: 10.1111/cogs.13280
Reframing Cognitive Science as a Complexity Science
Abstract
Complexity science is an investigative framework that stems from a number of tried and tested disciplines-including systems theory, nonlinear dynamical systems theory, and synergetics-and extends a common set of concepts, methods, and principles to understand how natural systems operate. By quantitatively employing concepts, such as emergence, nonlinearity, and self-organization, complexity science offers a way to understand the structures and operations of natural cognitive systems in a manner that is conceptually compelling and mathematically rigorous. Thus, complexity science both transforms understandings of cognition and reframes more traditional approaches. Consequently, if cognitive systems are indeed complex systems, then cognitive science ought to consider complexity science as a centerpiece of the discipline.
Keywords: Complexity; Computationalism; Emergence; Nonlinearity; Self-organization.
© 2023 Cognitive Science Society LLC.
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