ode的多实验参数可辨识性与模型理论

IF 1.6 2区 数学 Q2 MATHEMATICS, APPLIED
A. Ovchinnikov, A. Pillay, G. Pogudin, T. Scanlon
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引用次数: 11

摘要

结构可识别性是带有参数的ODE模型的一种属性,它允许从连续的无噪声数据中确定参数。这是实际可识别性的自然前提。进行多个独立的实验可以使更多的参数或参数的函数可识别,这是一个理想的特性。多少实验才足够?本文给出了一种确定多实验局部可辨识性的精确实验次数的算法,并给出了多实验全局可辨识性的实验次数最多相差1的上界。有趣的是,该算法的主要理论成分已经被发现并使用模型理论(在数理逻辑的意义上)证明。我们希望这种意想不到的联系将刺激应用代数和模型理论之间的相互作用,我们在参数可辨识性的背景下提供了一个简短的模型理论介绍。作为模型理论在该领域的另一个相关应用,我们构造了一个具有一个输出的非线性ODE系统,使得系统的单实验可辨识性和多实验可辨识性不同。这与最近关于单输出线性系统的结果形成对比。我们还提出了算法的蒙特卡罗随机化版本,具有多项式的算术复杂度。给出了该算法的具体实现,并通过实例对其性能进行了验证。源代码可从https://github.com/pogudingleb/ExperimentsBound获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-experiment parameter identifiability of ODEs and model theory
Structural identifiability is a property of an ODE model with parameters that allows for the parameters to be determined from continuous noise-free data. This is natural prerequisite for practical identifiability. Conducting multiple independent experiments could make more parameters or functions of parameters identifiable, which is a desirable property to have. How many experiments are sufficient? In the present paper, we provide an algorithm to determine the exact number of experiments for multi-experiment local identifiability and obtain an upper bound that is off at most by one for the number of experiments for multi-experiment global identifiability. Interestingly, the main theoretical ingredient of the algorithm has been discovered and proved using model theory (in the sense of mathematical logic). We hope that this unexpected connection will stimulate interactions between applied algebra and model theory, and we provide a short introduction to model theory in the context of parameter identifiability. As another related application of model theory in this area, we construct a nonlinear ODE system with one output such that single-experiment and mutiple-experiment identifiability are different for the system. This contrasts with recent results about single-output linear systems. We also present a Monte Carlo randomized version of the algorithm with a polynomial arithmetic complexity. Implementation of the algorithm is provided and its performance is demonstrated on several examples. The source code is available at https://github.com/pogudingleb/ExperimentsBound.
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来源期刊
CiteScore
2.20
自引率
0.00%
发文量
19
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