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Enhancing Parameter Estimation of Biochemical Networks by Exponentially Scaled Search Steps

机译:通过指数缩放搜索步骤增强生化网络的参数估计

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A fundamental problem of modelling in Systems Biology is to precisely characterise quantitative parameters, which are hard to measure experimentally. For this reason, it is common practise to estimate these parameter values, using evolutionary and other techniques, by fitting the model behaviour to given data. In this contribution, we extensively investigate the influence of exponentially scaled search steps on the performance of two evolutionary and one deterministic technique; namely CMA-Evolution Strategy, Differential Evolution, and the Hooke-Jeeves algorithm, respectively. We find that in most test cases, exponential scaling of search steps significantly improves the search performance for all three methods.
机译:系统生物学中建模的一个基本问题是精确表征难以通过实验测量的定量参数。因此,通常的做法是使用进化和其他技术,通过将模型行为拟合给定数据来估计这些参数值。在这项贡献中,我们广泛研究了指数级搜索步骤对两种进化和一种确定性技术的性能的影响;分别是CMA进化策略,差分进化和Hooke-Jeeves算法。我们发现,在大多数测试案例中,搜索步骤的指数缩放可显着提高所有三种方法的搜索性能。

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