The why, how, and when of representations for complex systems
Leo Torres, Ann S. Blevins, Danielle S. Bassett, Tina Eliassi-Rad

TL;DR
This paper proposes a domain-agnostic language and framework for analyzing complex systems, emphasizing the importance of dependencies and their influence on data representation and interpretation across various fields.
Contribution
It introduces a universal vocabulary and systematic approach for complex systems analysis, integrating dependencies and formal representations to enhance clarity and consistency.
Findings
Dependencies influence system analysis outcomes
Mathematical formalism choice affects interpretation
Real-world examples demonstrate framework applicability
Abstract
Complex systems thinking is applied to a wide variety of domains, from neuroscience to computer science and economics. The wide variety of implementations has resulted in two key challenges: the progenation of many domain-specific strategies that are seldom revisited or questioned, and the siloing of ideas within a domain due to inconsistency of complex systems language. In this work we offer basic, domain-agnostic language in order to advance towards a more cohesive vocabulary. We use this language to evaluate each step of the complex systems analysis pipeline, beginning with the system and data collected, then moving through different mathematical formalisms for encoding the observed data (i.e. graphs, simplicial complexes, and hypergraphs), and relevant computational methods for each formalism. At each step we consider different types of \emph{dependencies}; these are properties of…
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