Current robotic AI systems excel in perception and manipulation, yet they remain fundamentally non-autonomous. The missing element is not computational power or data, but an internal regulatory mechanism equivalent to biological Predictive Feedback (PF). PF is a continuous, inherited comparator that evaluates predicted versus actual internal activations, driving self-learning, self-correction, and intrinsic motivation. This essay argues that without PF, robotic systems cannot develop genuine cognitive autonomy. It proposes a biologically grounded four-layer architecture—Pattern Repository, Entity Generator, Associative Pointer Matrix, and Predictive Feedback Loop—that transforms robots from externally instructed executors into self-organizing predictive agents capable of internal reasoning, adaptive exploration, and robust behavior in novel environments.

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Eidoism proposes that the evolutionary dominance of Homo sapiens was not rooted in superior biology or intelligence alone, but in a neurocognitive mutation: the emergence of the recognition loop. Enabled by advanced frontal lobe development, this loop allowed humans to engage in recursive self-modeling, symbolic communication, and cultural acceleration. While other hominins like Neanderthals and Denisovans shared the same sex drive and survival instincts, they lacked this feedback system and therefore failed to scale socially and culturally. Recognition, not reproduction, became the true axis of evolutionary success.

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