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A Data-Mining Method for Detection of Complex Nonlinear Relations Applied to a Model of Apoptosis in Cell Populations

机译:一种用于细胞群凋亡模型的复杂非线性关系检测数据挖掘方法

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In studying data sets for complex nonlinear relations, neural networks can be used as modeling tools. Trained fully connected networks cannot, however, reveal the relevant inputs among a large set of potential ones, so a pruning of the connections must be undertaken to reveal the underlying relations. The paper presents a general method for detecting nonlinear relations between a set of potential inputs and an output variable. The method is based on a neural network pruning algorithm, which is run repetitively to finally yield Pareto fronts of solutions with respect to the approximation error and network complexity. The occurrence of an input on these fronts is taken to reflect its relevance for describing the output variable. The method is illustrated on a simulated cell population sensitized to death-inducing ligands resulting in programmed cell death (apoptosis).
机译:在研究复杂非线性关系的数据集时,可以将神经网络用作建模工具。但是,经过训练的完全连接的网络无法在大量潜在的网络中显示相关的输入,因此必须对连接进行修剪以显示潜在的关系。本文提出了一种用于检测一组潜在输入和一个输出变量之间的非线性关系的通用方法。该方法基于神经网络修剪算法,该算法反复运行以最终得出关于逼近误差和网络复杂度的Pareto前沿解。在这些方面出现输入是为了反映其与描述输出变量的相关性。该方法在对诱导死亡的配体敏感并导致程序性细胞死亡(细胞凋亡)的模拟细胞群上得到了说明。

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