重整化群
透视图(图形)
统计物理学
物理
泛函重整化群
群(周期表)
计算机科学
量子力学
人工智能
作者
Anna Poggialini,Pablo Villegas,Miguel A. Muñoz,Andrea Gabrielli
标识
DOI:10.1103/physrevlett.134.057401
摘要
Scale invariance profoundly influences the dynamics and structure of complex systems, spanning from critical phenomena to network architecture. Here, we propose a precise definition of scale-invariant networks by leveraging the concept of a constant entropy-loss rate across scales in a renormalization-group coarse-graining setting. This framework enables us to differentiate between scale-free and scale-invariant networks, revealing distinct characteristics within each class. Furthermore, we offer a comprehensive inventory of genuinely scale-invariant networks, both natural and artificially constructed, demonstrating, e.g., that the human connectome exhibits notable features of scale invariance. Our findings open new avenues for exploring the scale-invariant structural properties crucial in biological and sociotechnological systems.
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