File:2024 Hardy An Ego Self Attunement Dynam.pdf

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2024_Hardy_An_Ego_Self_Attunement_Dynam.pdf (file size: 806 KB, MIME type: application/pdf)

Summary

An Ego-Self Attunement Dynamics via a Retrocausal-Attractor Steering Self Awareness: A Hyperdimensional & Chaos Theory Framework.

Chris H. Hardy

T;he mind-brain interface is expounded as a hyperdimensional Retrocausal-Attractor setting a feedback loop (at sub-quantum scale), alike neural networks’ feedback-based self-organization.

The RC-Attractor models intention and decision as the interplay of proactive influences on an event-in-making-constellation, and retroactive ones on the operator. In a higher-dimensional Lorenz Model (with both chaotic and point-attractors), the conscious-flow creates an extended present (the saddle), influenced by past/present memories/behaviors and by a feedback loop from the intended/anticipated event-in-making. Complexified, the Dorje–Retrocausal-Attractor (with two centers of consciousness: hyperdimensional Self and spacetime ego) controls an ego-Self attunement and double-correction dynamics, which brings forth thought-complexification, self-awareness, and ethical conscience.

Keywords: Mind-brain interface, hyperdimensional physics, dynamical networks, attractors, retrocausality, feedback loop.

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current19:42, 27 May 2024 (806 KB)Don86326 (talk | contribs)Category:mind Category:chaos theory ==An Ego-Self Attunement Dynamics via a Retrocausal-Attractor Steering Self Awareness: A Hyperdimensional & Chaos Theory Framework. == ;Chris H. Hardy T;he mind-brain interface is expounded as a hyperdimensional Retrocausal-Attractor setting a feedback loop (at sub-quantum scale), alike neural networks’ feedback-based self-organization. The RC-Attractor models intention and decision as the interplay of proactive influences on an event-in-maki...

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