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arxiv: 1208.4660 · v1 · pith:B7YXSOJRnew · submitted 2012-08-23 · 🧬 q-bio.QM

Identifying dynamical systems with bifurcations from noisy partial observation

classification 🧬 q-bio.QM
keywords systemsbifurcationbifurcationsdatadynamicalmodelsnoisypartial
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Dynamical systems are used to model a variety of phenomena in which the bifurcation structure is a fundamental characteristic. Here we propose a statistical machine-learning approach to derive lowdimensional models that automatically integrate information in noisy time-series data from partial observations. The method is tested using artificial data generated from two cell-cycle control system models that exhibit different bifurcations, and the learned systems are shown to robustly inherit the bifurcation structure.

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