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COMPLEX TIME: Adaptation, Aging, & Arrow of Time

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A list of all pages that have property "Reference material notes" with value " * Braun et al. 2019 formalizes a notion of the energy of brain state transitions constrained by the underlying anatomical network architecture. The study also demonstrates that the energy to persist in a cognitively demanding state is modulated by dopamine and altered in schizophrenia. * Lynn et al. 2019 develops an analytical framework to study the information generated by a system as perceived by human observers, who collectively process this information in inefficient and biased ways. Our findings suggest that many real networks are constrained by the pressures of information transmission to and among biased humans, and that these pressures select for specific structural features.    ". Since there have been only a few results, also nearby values are displayed.

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    • Cognitive Regime Shift II - When/why/how the Brain Breaks/DanielleBassett  + ( * Braun et al. 2019 formalizes a notion o</br>* Braun et al. 2019 formalizes a notion of the energy of brain state transitions constrained by the underlying anatomical network architecture. The study also demonstrates that the energy to persist in a cognitively demanding state is modulated by dopamine and altered in schizophrenia. </br>* Lynn et al. 2019 develops an analytical framework to study the information generated by a system as perceived by human observers, who collectively process this information in inefficient and biased ways. Our findings suggest that many real networks are constrained by the pressures of information transmission to and among biased humans, and that these pressures select for specific structural features.   </br>select for specific structural features.    )