Reconstruction of the Gene Regulatory Network by Hybrid Algorithm of Clonal Selection and Trigonometric Differential Evolution

A. Fefelov, V. Lytvynenko, M. Voronenko, S. Babichev, V. Osypenko
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引用次数: 4

Abstract

One of the ways to solve the problem with identifying parameters of S-system, which is used as a model for the reconstruction of a gene regulatory network, is considered. A hybrid algorithm based on a combination of clonal selection methods and trigonometric differential evolution has been proposed. The experimental investigations of the individual parameters influence of the hybrid algorithm on a level of model errors of time series approximation of gene expression data have been carried out. The results of comparative tests with other computational methods are presented.
克隆选择与三角差分进化混合算法重建基因调控网络
考虑了一种解决s系统参数辨识问题的方法,并将s系统作为基因调控网络重构的模型。提出了一种基于克隆选择方法和三角差分进化相结合的混合算法。实验研究了混合算法中各参数对基因表达数据时间序列逼近模型误差水平的影响。给出了与其他计算方法的对比试验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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