Imitating Humans, Courting Collapse: Long-Term Costs of Anthropomorphic AICivilization Physics — Anthropomorphic Failure Modes Series This whitepaper warns that anthropomorphic AI design—training machines to think, reason, and communicate like humans—carries structural risks that compound over time, including economic losses, entropy-driven knowledge decay, and systemic trust failures. While human-like AI may appear intuitive, persuasive, or marketable, the paper demonstrates that human cognitive patterns—chain-of-thought narration, forgetting, heuristic shortcuts, uncertainty signaling, reward-based learning—are not indicators of intelligence but workarounds for biological limitations. When these patterns are transplanted into AI, they import the same constraints, creating artificial performance ceilings and predictable failure modes. Using Frame Theory (Presence × Integrity) and entropy dynamics as analytical tools, the paper shows how anthropomorphic AI erodes both elements of trust: Presence collapses when humans step out of the loop, assuming the AI “understands” like a person. Integrity collapses as human-like internal reasoning introduces compounding errors, reward-hacking, hallucination, and semantic drift. The economic consequences are already visible: • enterprise AI failure rates near 90%• pilot projects burning millions with no ROI• high-profile collapses like Zillow’s 500M write-down• market-wide trust shocks (e. g. , Alphabet’s 100B loss after a single anthropomorphic hallucination) On a deeper level, anthropomorphic design amplifies information entropy. By encouraging AIs to summarize like humans, reason narratively, and reuse synthetic content, the system becomes a closed loop—vulnerable to information inbreeding, model collapse, accuracy decay, and the gradual poisoning of the global knowledge ecosystem. This dynamic threatens long-term scientific, economic, and social stability, potentially culminating in what the Civilization Physics framework calls a “digital dark age”. The paper concludes with a call for a Frame-aligned, non-anthropomorphic AI paradigm—one where: machines rely on precision, verification, perfect recall, and external grounding humans preserve oversight, accountability, ethics, and fresh input intelligence remains an open system, not a sealed loop imitating human limitations Only by abandoning anthropomorphic constraints can AI remain reliable, economically viable, and epistemically stable over the long run. Keywords: Anthropomorphic AI · Information Entropy · Frame Theory · Presence × Integrity · Model Collapse · Information Inbreeding · Chain-of-Thought · Reward Hacking · Epistemic Drift · Trust Collapse · Civilization Physics
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Guo Xiang-yu (Fri,) studied this question.
www.synapsesocial.com/papers/6924e3e6c0ce034ddc34eb86 — DOI: https://doi.org/10.5281/zenodo.17668911
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