Zipfian universality of interaction laws: A statistical-mechanics framework for inverse power scaling
Jerome Baray

TL;DR
This paper introduces a statistical-mechanics framework explaining the universal emergence of inverse power-law interaction laws across various systems as stable fixed points of aggregation processes with heavy-tailed heterogeneity.
Contribution
It provides a unified, domain-independent explanation for inverse power-law interactions as emergent phenomena from Zipfian aggregation principles.
Findings
Inverse-square law as a stable fixed point in isotropic three-dimensional aggregation
Deviations explained by anisotropy or effective dimensionality
Framework applies across physics, economics, and geography
Abstract
Inverse power-law interaction forms, such as the inverse-square law, recur across a wide range of physical, social, and spatial systems. While traditionally derived from specific microscopic mechanisms, the ubiquity of these laws suggests a more general organizing principle. This article proposes a statistical-mechanics framework in which such interaction laws emerge as macroscopic fixed points of aggregation processes involving strongly heterogeneous microscopic contributions. We consider systems where individual interaction sources exhibit heavy-tailed heterogeneity consistent with Zipf-Pareto statistics and where aggregation proceeds without intrinsic length scales. Under minimal assumptions of heterogeneity, multiplicativity, scale invariance, and stability under coarse-graining, we show that the resulting macroscopic interaction field must adopt a scale-free, power-law form. The…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Complex Network Analysis Techniques · Theoretical and Computational Physics
