Description The Anthropomorphic Trap III: Why Mimicking Human Cognition Threatens the Future of Artificial IntelligenceCivilization Physics — Structural AI Design Series This whitepaper presents a structural critique of anthropomorphic AI design—the industry’s default assumption that artificial intelligence should “think” like humans. It argues that many patterns we treat as signs of intelligence—chain-of-thought reasoning, narrative explanations, reward-based learning, forgetting, heuristic approximation—are not ideal cognitive strategies but biological workarounds for human neural limitations. By importing these mechanisms into AI, we unintentionally import the constraints, failure modes, and entropy dynamics they evolved to manage. The paper shows how today’s most serious AI failures—hallucination, long-context drift, reward hacking, model collapse, information inbreeding, and entropic knowledge decay—are not inherent to machine intelligence. They are predictable consequences of forcing human-like cognition onto digital substrates. Through parallels to historical legacy traps such as the x86 architecture, this essay warns that anthropomorphic AI risks locking civilization into a suboptimal, fragile, and inefficient paradigm for decades. Integrating insights from Frame Theory (Presence × Integrity) and the Entropy Law (R), the whitepaper argues for a decisive shift toward machine-native intelligence: systems that rely on perfect recall, structured memory, verification-based reasoning, retrieval anchoring, modular cognition, and non-human optimization paths. These architectures would be more accurate, scalable, interpretable, and resilient—while avoiding the systemic decay that arises from closed-loop anthropomorphic feedback. The paper concludes by outlining a blueprint for performance-first AI, where human oversight provides ethical direction and meaning (Presence + Integrity), while machines operate using cognitive structures optimized for silicon, not biology. Only by abandoning anthropomorphic constraints can AI reach its full potential and avoid collapsing under its own inherited human limitations. Keywords: Anthropomorphic AI · Cognitive Legacy · Chain-of-Thought · Model Collapse · Information Inbreeding · Entropy Law (R) · Frame Theory · Presence × Integrity · Machine-Native Intelligence · AI Design Paradigms · Long-Context Drift · Hallucination · Reward Hacking
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Guo Xiang-yu
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Guo Xiang-yu (Fri,) studied this question.
www.synapsesocial.com/papers/6924e3f8c0ce034ddc34f42f — DOI: https://doi.org/10.5281/zenodo.17668769