2001
DOI: 10.1017/s0140525x01000097
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Toward an interpretation of dynamic neural activity in terms of chaotic dynamical systems

Abstract: Using the concepts of chaotic dynamical systems, we present an interpretation of dynamic neural activity found in cortical and subcortical areas. The discovery of chaotic itinerancy in high-dimensional dynamical systems with and without a noise term has motivated a new interpretation of this dynamic neural activity, cast in terms of the high-dimensional transitory dynamics among "exotic" attractors. This interpretation is quite different from the conventional one, cast in terms of simple behavior on low-dimens… Show more

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Cited by 442 publications
(291 citation statements)
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References 242 publications
(318 reference statements)
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“…El Naschie [58,60,61] and others developed for the fundamental question of time reversibility the notion of a Cantorian space-time (compare the idea of Cantor coding by Tsuda [59]). What is really remarkable of this Cantorian space-time is that applying all the probabilistic necessary laws, the values of the Hausdorff dimension are intrinsically linked to the golden mean and its successive powers.…”
Section: The Universe As a World Of Numbersmentioning
confidence: 99%
“…El Naschie [58,60,61] and others developed for the fundamental question of time reversibility the notion of a Cantorian space-time (compare the idea of Cantor coding by Tsuda [59]). What is really remarkable of this Cantorian space-time is that applying all the probabilistic necessary laws, the values of the Hausdorff dimension are intrinsically linked to the golden mean and its successive powers.…”
Section: The Universe As a World Of Numbersmentioning
confidence: 99%
“…Among others, we proposed a neural chaotic itinerancy [1,2,3,4,5], where typical cortical transitions are not merely random but are transitory and chaotic dynamics (see, for example, [6]). …”
Section: Introductionmentioning
confidence: 99%
“…Evidence for brain stability comes from demonstrations that reproducible patterns recur in reproducible behavioral states [Freeman, 2005]. Computational evidence for flexibility and stability comes from a hierarchy of models of nonlinear brain dynamics called K-sets [Freeman, 1975[Freeman, , 2000Kozma and Freeman, 2001;Principe et al, 2001;Kozma, Freeman and Erdí, 2003], which are related to the models of Friston [2000], Tsuda [2001], and Stam et al [2003], and which serve to simulate multiple states of unit and field potentials and their changes with learning. The multiplicity of states shows that brains are intrinsically unstable in jumping from each state to the next by state transitions, which closely resemble phase transitions in physical media [Haken, 1983].…”
Section: Introductionmentioning
confidence: 99%