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A Second-Order Learning Algorithm for Computing Optimal Regulatory Pathways

机译:计算最优监管路径的二阶学习算法

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Gene regulatory pathways play an important role in the functional understanding and interpretation of gene function. Many different approaches have been developed to model and simulate gene regulatory networks. In this paper we present the results of an iterative new second-order learning algorithm based on the multilayer perceptron (MLP) for generating optimal gene regulatory pathways by using ordinary differential equations. The algorithm based on Newton's method is independent on the learning parameter and overcomes the drawbacks of the standard backpropagation (BP) algorithm. The methodology generates flow vectors which indicate the flow of mRN A and thereby the protein produced from one gene to another gene. A set of weighting coefficients representing concentration of various transcription factors is incorporated. The gene regulatory pathways are obtained through optimization of an objective function with respect to these weighting coefficients. Two gene regulatory networks are used to demonstrate the efficiency of the proposed learning algorithm. A comparative study with the existing extreme pathway analysis (EPA) also forms a part of this study. Results reported in the paper were corroborated by the same reported in the literature.
机译:基因调控途径在基因功能的功能理解和解释中起着重要作用。已经开发出许多不同的方法来建模和模拟基因调控网络。在本文中,我们介绍了基于多层感知器(MLP)的迭代新二阶学习算法的结果,该算法可通过使用常微分方程生成最佳基因调控途径。基于牛顿法的算法独立于学习参数,克服了标准反向传播算法的缺点。该方法产生指示mRNA的流动的流动载体,并由此指示从一个基因产生的蛋白质到另一基因的流动。合并了一组代表各种转录因子浓度的加权系数。通过针对这些加权系数优化目标函数来获得基因调控途径。使用两个基因调节网络来证明所提出的学习算法的效率。与现有的极端途径分析(EPA)进行的比较研究也构成了本研究的一部分。论文报道的结果与文献报道的结果相同。

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