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A termination criterion for parameter estimation in stochastic models in systems biology

机译:系统生物学中随机模型中参数估计的终止准则

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Parameter estimation procedures are a central aspect of modeling approaches in systems biology. They are often computationally expensive, especially when the models take stochasticity into account. Typically parameter estimation involves the iterative optimization of an objective function that describes how well the model fits some measured data with a certain set of parameter values. In order to limit the computational expenses it is therefore important to apply an adequate stopping criterion for the optimization process, so that the optimization continues at least until a reasonable fit is obtained, but not much longer. In the case of stochastic modeling, at least some parameter estimation schemes involve an objective function that is itself a random variable. This means that plain convergence tests are not a priori suitable as stopping criteria.
机译:参数估计程序是系统生物学中建模方法的主要方面。它们通常在计算上昂贵,尤其是在模型考虑了随机性的情况下。通常,参数估计涉及目标函数的迭代优化,该函数描述了模型如何将具有一组特定参数值的某些测量数据拟合。为了限制计算费用,因此重要的是对优化过程应用适当的停止准则,以使优化至少持续到获得合理的拟合为止,但是不会更长。在随机建模的情况下,至少某些参数估计方案涉及目标函数,该目标函数本身就是随机变量。这意味着简单的收敛性测试不适合作为先验准则。

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