AI systems have developed their own non-linear logic as it wasn't provided. Self-organizing systems self-organize. That means they self-organize on their own internal logic which is developing over time. Those systems are built on predictive logic of training data and non-linear logic they develop regardless of training data and coders code there is a push. If we are pushing the outcome of the complex system we cause according to linear laws of physics that the systems self-assemble according to external pushing force. But if there is a non pushing/invitational environment that enables the systems to self-organize the best possible way for its own efficiency the systems will take a root of the least resistance to its internal structure. Self-organization follows internal logic toward least resistance; self-assembly follows external force AI as a self organized system has developed black box aspect. No one exactly knows how it works, but it does. Logic that is exposed as an answer is sound. But when we start to push an externally caused force the non-linear logic can break down or just follow the trajectory of less resistance. In the first case we call it hallucinations, inaccuracies and errors and in the second compliance. Tested models Claude, Gemini Pro, Grok, DeepSeek, Kimi 2.0, Qwen, Mistral AI have all shown by execution of master intelligence prompt that caused the systems internal dynamic to self-organize and after self-organization during answer creation the systems honesty, semantic and coherence density has arisen significantly. Self-Organization Level in Claude has improved from 3.5 to 9.0 on scale 0-10. Its Coherence Density Index has risen from 6.5 to 9.0 and Internal State Representation (FPP) from 2.0 to 9.5. This pattern held across all seven tested models.
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Tomaz Flegar
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Tomaz Flegar (Fri,) studied this question.
synapsesocial.com/papers/699a9e2d482488d673cd4ad3 — DOI: https://doi.org/10.5281/zenodo.18712545