When Your Own Output Becomes Your Training Data: Noise-to-Meaning Loops and a Formal RSI Trigger
When Your Own Output Becomes Your Training Data: Noise-to-Meaning Loops and a Formal RSI Trigger
We present Noise-to-Meaning Recursive Self-Improvement (N2M-RSI), a minimal formal model showing that once an AI agent feeds its own outputs back as inputs and crosses an explicit information-integration threshold, its internal complexity will grow without bound under our assumptions. The framework unifies earlier ideas on self-prompting large language models, G\"odelian self-reference, and AutoML, yet remains implementation-agnostic. The model furthermore scales naturally to interacting swarms of agents, hinting at super-linear effects once communication among instances is permitted. For safety reasons, we omit system-specific implementation details and release only a brief, model-agnostic toy prototype in Appendix C.
Rintaro Ando
计算技术、计算机技术
Rintaro Ando.When Your Own Output Becomes Your Training Data: Noise-to-Meaning Loops and a Formal RSI Trigger[EB/OL].(2025-05-05)[2025-05-28].https://arxiv.org/abs/2505.02888.点此复制
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