The Universal Inbreeding Law: Closure, Diversity Loss, Correlated Error, and Integrity Decay in Self-Organizing SystemsCivilization Physics — Entropy, Information in information theory, it measures uncertainty in a distribution. Extending this logic to self-organizing information systems, the paper argues that collapse occurs when closure exhausts a system’s ability to preserve ordered difference without fresh external input. Entropy therefore functions as a marker of exhausted adaptive capacity rather than an independent agent of decay. To formalize the law, the paper introduces two compact structural expressions: Quality = Integrity × Diversity Stability = Presence × Integrity These equations capture two linked conditions. Diversity preserves adaptive range and anomaly sensitivity. Integrity preserves coherent function and reliable transmission. Presence refers to continued contact with externally grounded reality-bearing input. Closure reduces diversity, which increases correlated error, which ultimately degrades integrity and stability. The paper further defines closed recursion as a condition in which future states are generated primarily from a system’s own prior outputs while externally grounded correction falls below the threshold required to preserve meaningful difference. Under such conditions, rare states and edge cases disappear first, errors become inherited across cycles, and systems eventually lose their capacity for self-correction. The collapse mechanism is summarized structurally: closure rises → external difference falls → diversity contracts → errors become correlated → integrity weakens → collapse or functional dead zones emerge Importantly, collapse is often delayed in appearance because surface fluency or operational continuity can remain high even after underlying diversity and anomaly-detection capacity have already eroded. The paper tests this framework across four major domains. In biology, classical inbreeding depression and serial cloning provide the clearest empirical foundation. Increased genetic closure reduces heterozygosity, exposes deleterious recessive combinations, and lowers adaptive fitness. Serial cloning intensifies this process further, with repeated copying chains accumulating developmental abnormalities and mutational load over generations. Sexual recombination functions as a reopening mechanism that restores difference and interrupts recursive closure. In artificial intelligence, recursive training on model-generated outputs produces model collapse. Studies demonstrate loss of distributional tails, lexical narrowing, semantic contraction, and degradation in rare-event representation when synthetic outputs increasingly replace real data. Continued accumulation of fresh human-generated data partially counteracts this process, reinforcing the paper’s broader claim that open systems require sustained external negentropy input. In cognitive development, early language deprivation and institutional deprivation studies demonstrate that timely external input is constitutive rather than optional for intelligence formation. Delayed exposure does not merely slow development; it can permanently narrow the architecture of linguistic and cognitive organization. In language and civilization, the paper extends the framework into public discourse systems. Public language can remain syntactically active while losing semantic openness, anomaly sensitivity, and corrective contact with reality. Echo chambers, recursive AI-generated language, coordinated propaganda environments, and answer-first AI systems all exhibit forms of recursive narrowing in which repetition gradually displaces correction. A major theoretical contribution is the integration of The Heat Death of Language into the same structural framework. Public language ecosystems under high closure may preserve fluency while losing semantic temperature gradients—contradiction, minority signals, edge cases, and dissent. AI systems trained on such degraded language streams inherit the resulting judgment distortions and reduced reality contact. The paper also distinguishes carefully between universality of structure and universality of mechanism. Genes, language, institutions, and neural networks do not obey identical physical processes. The shared pattern lies in their morphology of failure under closure: systems survive by importing difference and preserving corrective contact with external reality. The practical implications are broad. Sustainable systems require mechanisms for: Recombination and diversity preservation. Provenance and external correction. Minority signal retention. Adversarial feedback and anomaly exposure. Continued reality contact through open informational exchange. These requirements apply differently across biology, AI, governance, education, and public communication, but the underlying principle remains the same. The paper concludes with a deliberately sharp proposition: difference is not a luxury; it is the condition of correction. Systems remain alive to reality only while something genuinely external can still enter, disturb them, and force revision. When that channel closes, collapse begins—not always immediately, but structurally and predictably. Within the Civilization Physics framework, the Universal Inbreeding Law functions as a unifying explanation for a broad class of failures across adaptive systems, linking entropy, closure, diversity loss, and integrity decay into a single general principle. Keywords: Universal Inbreeding Law · Entropy · Closed Recursion · Model Collapse · Information Inbreeding · Diversity Loss · Integrity Decay · Linguistic Heat Death · Self-Organizing Systems · Civilization Physics
Xiangyu Guo (Wed,) studied this question.