Asymptotic Semantic Collapse in Hierarchical Optimization
Faruk Alpay, Bugra Kilictas

TL;DR
This paper analyzes how hierarchical optimization in multi-agent language systems leads to a convergence towards a shared, uniform semantic state, driven by dominant context influence, with implications for information content and consensus formation.
Contribution
It introduces a geometric and information-theoretic framework for understanding semantic collapse and demonstrates path independence and entropy reduction in the convergence process.
Findings
Convergence to a shared semantic state is path-independent.
Moving from atomic to entangled representations reduces node entropy to zero.
Theoretical analysis links geometric structures with information content in semantics.
Abstract
Multi-agent language systems can exhibit a failure mode where a shared dominant context progressively absorbs individual semantics, yielding near-uniform behavior across agents. We study this effect under the name Asymptotic Semantic Collapse in Hierarchical Optimization. In a closed linguistic setting with a Dominant Anchor Node whose semantic state has effectively infinite inertia, we show that repeated interactions with Peripheral Agent Nodes drive an asymptotic alignment that minimizes a global loss. We model semantic states as points on a Riemannian manifold and analyze the induced projection dynamics. Two consequences follow. First, the limiting semantic configuration is insensitive to the optimization history: both smooth gradient-style updates and stochastic noisy updates converge to the same topological endpoint, establishing path independence at convergence. Second, the degree…
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Taxonomy
TopicsFerroelectric and Negative Capacitance Devices · Constraint Satisfaction and Optimization · DNA and Biological Computing
