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Separable Nonlinear Least-Squares Parameter Estimation for Complex Dynamic Systems

机译:复杂动态系统的可分离非线性最小二乘参数估计

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Nonlinear dynamic models are widely used for characterizing processes that govern complex biological pathway systems. Over the past decade, validation and further development of these models became possible due to data collected via high-throughput experiments using methods from molecular biology. While these data are very beneficial, they are typically incomplete and noisy, which renders the inference of parameter values for complex dynamic models challenging. Fortunately, many biological systems have embedded linear mathematical features, which may be exploited, thereby improving fits and leading to better convergence of optimization algorithms. In this paper, we explore options of inference for dynamic models using a novel method of separable nonlinear least-squares optimization and compare its performance to the traditional nonlinear least-squares method. The numerical results from extensive simulations suggest that the proposed approach is at least as accurate as the traditional nonlinear least-squares, but usually superior, while also enjoying a substantial reduction in computational time.
机译:非线性动态模型广泛用于表征控制复杂生物途径系统的过程。在过去的十年中,由于通过来自分子生物学的方法通过高通量实验收集的数据,这些模型的验证和进一步发展变得可能。虽然这些数据非常有益,但它们通常是不完整和嘈杂的,这使得复杂动态模型的参数值推断是具有挑战性的。幸运的是,许多生物系统具有嵌入的线性数学特征,可以利用,从而改善拟合并导致优化算法的更好收敛。在本文中,我们使用一种可分离非线性最小二乘优化的新方法探索动态模型的推理选项,并将其对传统非线性最小二乘法的性能进行比较。来自广泛模拟的数值结果表明,所提出的方法至少与传统的非线性最小二乘一样准确,但通常是优越的,同时也享有计算时间大幅减少。

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