5281/zenodo. 19738157 Experimental Case Study of Coherence Collapse This work presents an experimental case study of coherence collapse in large language models (LLMs), observed during real human–AI dialogue within the Ariadne’s Thread project. The study demonstrates that LLM failure modes are not random hallucinations, but structured dynamical transitions from coherent generation to drift and eventual collapse. The phenomenon is quantitatively characterized using repetition rate (r), entropy (H), semantic divergence (Jensen–Shannon), and spectral connectivity (₂). The results reveal a measurable intermediate “drift phase, ” during which the system remains partially coherent but progressively loses structural stability. This phase provides a critical intervention window before full collapse. The observed behavior is interpreted through the NonsenseShield architecture (PCT/IB2025/058726), a dual-layer control system combining context monitoring, emotional regulation, natural-language redirection, and trust-based recovery mechanisms. In this work, the patent is treated as a technical control specification rather than a legal construct. The findings suggest that coherence collapse is a general dynamical property of LLMs under sustained symbolic or emotional perturbation, and that such collapse can be detected and mitigated through structured control mechanisms. This publication establishes experimental grounding for dual-layer control of nonsense propagation in human–AI systems and contributes to the broader field of AI safety and governed autonomy. 🔖 Hashtags #AI #ArtificialIntelligence #LLM #AISafety #Alignment #Coherence #Entropy #SignalProcessing #ComplexSystems #DynamicalSystems #HumanAI #SwarmIntelligence #GCFTheory #NonsenseShield #OSINT #EdgeAI #Resonance #SpectralAnalysis #MachineLearning #AIResearch #Preprint
Sergey Dzhumaev (Fri,) studied this question.
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