English

Component systems: do null models explain everything?

Statistical Mechanics 2026-01-21 v1 Other Quantitative Biology

Abstract

Component systems - ensembles of realizations built from a shared repertoire of modular parts - are ubiquitous in biological, ecological, technological, and socio-cultural domains. From genomes to texts, cities, and software, these systems exhibit statistical regularities that often meet the "bona fide" requirements of laws in the physical sciences. Here, we argue that the generality and simplicity of those laws are often due to basic combinatorial or sampling constraints, raising the question of whether such patterns are actually revealing system-specific mechanisms and how we might move beyond them. To this end, we first present a unifying mathematical framework, which allows us to compare modular systems in different fields and highlights the common "null" trends as well as the system-specific uniqueness, which, arguably, are signatures of the underlying generative dynamics. Next, we can exploit the framework with statistical mechanics and modern machine-learning tools for a twofold objective. (i) Explaining why the general regularities emerge, highlighting the constraints between them and the general principles at their origins, and (ii) "subtracting" them from data, which will isolate the informative features for inferring hidden system-specific generative processes, mechanistic and causal aspects.

Keywords

Cite

@article{arxiv.2601.13985,
  title  = {Component systems: do null models explain everything?},
  author = {Andrea Mazzolini and Mattia Corigliano and Rossana Droghetti and Matteo Osella and Marco Cosentino-Lagomarsino},
  journal= {arXiv preprint arXiv:2601.13985},
  year   = {2026}
}