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A recurrent fuzzy neural model of a gene regulatory network for knowledge extraction using differential evolution

机译:基因调控网络的递归模糊神经模型用于差分进化的知识提取

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A gene regulatory network describes the influence of genes over others. This paper attempts to model gene regulatory network by a recurrent neural net with fuzzy membership distribution of weights. A cost function is designed to match the response of neurons in the network with the gene expression data, and a differential evolution algorithm is used to minimize the cost function. The minimization yields fuzzy membership distribution of weights, which on de-fuzzification provides the desired signed weights of the gene regulatory network. Computer simulation reveals that the proposed method outperforms existing techniques in detecting sign, and magnitude of weights of the regulatory network.
机译:基因调控网络描述了基因对其他基因的影响。本文试图通过具有权重模糊隶属分布的递归神经网络对基因调控网络进行建模。设计成本函数以使网络中神经元的响应与基因表达数据相匹配,并使用差分进化算法来最小化成本函数。最小化会产生权重的模糊隶属分布,这在去模糊化后会提供所需的基因调控网络的权重。计算机仿真表明,所提出的方法在检测信号和监管网络权重大小方面优于现有技术。

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