AI RESEARCH
Propagation of Chaos in Contextual Flow Maps
arXiv CS.LG
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ArXi:2605.16747v1 Announce Type: new We develop a quantitative statistical theory of transformers in the large-context regime by adopting the abstraction of contextual flow maps (CFMs): dynamical systems that evolve a distinguished token in the presence of a contextual measure across a stack of attention blocks. Within this framework, the finite-context model approximates an idealized infinite-context system in which the contextual measure is replaced by its underlying population, so that the context length $n$ becomes a statistical resource.