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Model selection for dynamical systems via sparse regression and information criteria

机译:通过稀疏回归和信息准则为动力系统选择模型

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摘要

We develop an algorithm for model selection which allows for the consideration of a combinatorially large number of candidate models governing a dynamical system. The innovation circumvents a disadvantage of standard model selection which typically limits the number of candidate models considered due to the intractability of computing information criteria. Using a recently developed sparse identification of nonlinear dynamics algorithm, the sub-selection of candidate models near the Pareto frontier allows feasible computation of Akaike information criteria (AIC) or Bayes information criteria scores for the remaining candidate models. The information criteria hierarchically ranks the most informative models, enabling the automatic and principled selection of the model with the strongest support in relation to the time-series data. Specifically, we show that AIC scores place each candidate model in the strong support, weak support or no support category. The method correctly recovers several canonical dynamical systems, including a susceptible-exposed-infectious-recovered disease model, Burgers’ equation and the Lorenz equations, identifying the correct dynamical system as the only candidate model with strong support.
机译:我们开发了一种用于模型选择的算法,该算法可以考虑控制动态系统的大量候选模型。本发明克服了标准模型选择的缺点,该缺点通常由于计算信息标准的难处理性而限制了所考虑的候选模型的数量。使用最近开发的非线性动力学稀疏识别算法,在Pareto边界附近对候选模型进行子选择,可以对其余候选模型进行Akaike信息标准(AIC)或Bayes信息标准评分的可行计算。信息标准对信息最丰富的模型进行分级排名,从而在与时间序列数据相关的最强大支持下,能够自动,原则上选择模型。具体来说,我们显示AIC分数将每个候选模型置于强支持,弱支持或无支持类别中。该方法正确地恢复了几个典型的动力学系统,包括易感暴露-传染恢复模型,Burgers方程和Lorenz方程,从而确定了正确的动力学系统是唯一有力支持的候选模型。

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