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Get Free AccessThe purpose of this review was to integrate leading paradigms in psychology and neuroscience with a theory of the embodied, situated human brain, called the Hierarchically Mechanistic Mind (HMM). The HMM describes the brain as a complex adaptive system that functions to minimize the entropy of our sensory and physical states via action-perception cycles generated by hierarchical neural dynamics. First, we review the extant literature on the hierarchical structure of the brain. Next, we derive the HMM from a broader evolutionary systems theory that explains neural structure and function in terms of dynamic interactions across four nested levels of biological causation (i.e., adaptation, phylogeny, ontogeny, and mechanism). We then describe how the HMM aligns with a global brain theory in neuroscience called the free-energy principle, leveraging this theory to mathematically formulate neural dynamics across hierarchical spatiotemporal scales. We conclude by exploring the implications of the HMM for psychological inquiry.
Paul B. Badcock, Karl Friston, Maxwell J. D. Ramstead, Annemie Ploeger, Jakob Hohwy (2019). The hierarchically mechanistic mind: an evolutionary systems theory of the human brain, cognition, and behavior. , 19(6), DOI: https://doi.org/10.3758/s13415-019-00721-3.
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Type
Article
Year
2019
Authors
5
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.3758/s13415-019-00721-3
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