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arxiv: 1706.07005 · v2 · pith:SRQ7QPPJnew · submitted 2017-06-21 · 🧬 q-bio.QM

Statistical abstraction for multi-scale spatio-temporal systems

classification 🧬 q-bio.QM
keywords systemsinternalmulti-scalespatio-temporalabstractingabstractionaccurateagents
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Spatio-temporal systems exhibiting multi-scale behaviour are common in applications ranging from cyber-physical systems to systems biology, yet they present formidable challenges for computational modelling and analysis. Here we consider a prototypic scenario where spatially distributed agents decide their movement based on external inputs and a fast-equilibrating internal computation. We propose a generally applicable strategy based on statistically abstracting the internal system using Gaussian Processes, a powerful class of non-parametric regression techniques from Bayesian Machine Learning. We show on a running example of bacterial chemotaxis that this approach leads to accurate and much faster simulations in a variety of scenarios.

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