Perturbation Dose Responses in Recursive LLM Loops: Raw Switching, Stochastic Floors, and Persistent Escape under Append, Replace, and Dialog Updates
Pawel Kaplanski (Kaplanski AI Lab)

TL;DR
This paper investigates how recursive language-model loops respond to text perturbations, analyzing persistence, escape, and stability across different update protocols and conditions.
Contribution
It introduces a detailed experimental framework to measure and interpret the effects of perturbations on recursive LLM loops, revealing the influence of context-update rules and horizon sensitivity.
Findings
Persistent redirection is conditioned by memory policies in append-mode loops.
Retained source-basin escape crosses 50% near 400 tokens with full history.
Destination-coherent persistence reaches 0.50 near 1,500 tokens, indicating a dose-dependent effect.
Abstract
Recursive language-model loops often settle into recognizable attractor-like patterns. The practical question is how much injected text is needed to move a settled loop somewhere else, and whether that move lasts. We study this in 30-step recursive loops by separating the model from the context-update rule: append, replace, and dialog updates expose different histories to the same generator. The main result is that persistent redirection in append-mode recursive loops is memory-policy-conditioned. Under a 12,000-character tail clip, destination-coherent persistence plateaus near 16 percent and retained source-basin escape near 36 percent at dose 400; neither crosses 50 percent. Under a full-history protocol, retained source-basin escape crosses 50 percent near 400 tokens and saturates at 75-80 percent by 1,500 tokens; destination-coherent persistence first reaches 0.50 near 1,500…
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