Entropy Collapse: A Universal Failure Mode of Intelligent Systems
Truong Xuan Khanh, Truong Quynh Hoa

TL;DR
This paper demonstrates that feedback-amplified adaptive systems undergo a first-order entropy collapse, a sudden phase transition without traditional early-warning signals, unifying various collapse phenomena across disciplines.
Contribution
It introduces the concept of entropy collapse as a universal first-order transition in adaptive systems, with exact theoretical results and neural experiments validating the theory.
Findings
Entropy collapse occurs when feedback amplification exceeds regeneration rate.
No pre-transition warnings like rising autocorrelation or variance are observed.
Neural experiments confirm the theoretical predictions with high accuracy.
Abstract
A foundational assumption in complex-system collapse studies is that critical transitions are second-order, preceded by early-warning signals like rising autocorrelation, variance, and critical slowing down (Scheffer, 2009). We show this fails for feedback-amplified adaptive systems. We prove entropy collapse - the irreversible contraction of effective state space when feedback amplification alpha exceeds novelty regeneration beta - is a first-order (discontinuous) phase transition. Four exact results: (1) Threshold alpha_c(beta) = 1/(1-beta), from Jacobian spectrum of Multiplicative-Weights operator. (2) Discontinuity: entropy order parameter m = 1 - H_ss/H_max jumps Delta m_0 = 0.698 at alpha_c, with hysteresis Delta H_hyst approx 2.73 nats (lower bound; up to 3.9 nats in simulations); no pre-transition warnings as autocorrelation and variance stay finite. (3) Relaxation exponent nu =…
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Taxonomy
TopicsEmbodied and Extended Cognition · Economic and Technological Innovation · Innovation, Sustainability, Human-Machine Systems
