A scalable computational framework for establishing long-term behavior of stochastic reaction networks
Ankit Gupta, Corentin Briat, Mustafa Khammash

TL;DR
This paper introduces a scalable computational framework for analyzing the long-term behavior and stability of stochastic reaction networks, enabling efficient assessment of ergodicity and moment boundedness in biological systems.
Contribution
It develops a novel, scalable method using linear programming to determine stability and ergodicity in stochastic reaction networks, bridging a gap in analysis tools.
Findings
Framework effectively assesses stability in various biological networks.
Computational complexity is often linear in the number of species.
Validated on networks from biochemistry, epidemiology, and ecology.
Abstract
Reaction networks are systems in which the populations of a finite number of species evolve through predefined interactions. Such networks are found as modeling tools in many biological disciplines such as biochemistry, ecology, epidemiology, immunology, systems biology and synthetic biology. It is now well-established that, for small population sizes, stochastic models for biochemical reaction networks are necessary to capture randomness in the interactions. The tools for analyzing such models, however, still lag far behind their deterministic counterparts. In this paper, we bridge this gap by developing a constructive framework for examining the long-term behavior and stability properties of the reaction dynamics in a stochastic setting. In particular, we address the problems of determining ergodicity of the reaction dynamics, which is analogous to having a globally attracting fixed…
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