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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Modeling of gene regulatory networks with hybrid differential evolution and particle swarm optimization.
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Modeling of gene regulatory networks with hybrid differential evolution and particle swarm optimization.

机译:具有混合差异进化和粒子群优化的基因调控网络建模。

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摘要

In the last decade, recurrent neural networks (RNNs) have attracted more efforts in inferring genetic regulatory networks (GRNs), using time series gene expression data from microarray experiments. This is critically important for revealing fundamental cellular processes, investigating gene functions, and understanding their relations. However, RNNs are well known for training difficulty. Traditional gradient descent-based methods are easily stuck in local minima and the computation of the derivatives is also not always possible. Here, the performance of three evolutionary-swarm computation technology-based methods, known as differential evolution (DE), particle swarm optimization (PSO), and the hybrid of DE and PSO (DEPSO), in training RNNs is investigated. Furthermore, the gene networks are reconstructed via the identification of the gene interactions, which are explained through corresponding connection weight matrices. The experimental results on two data sets studied in this paper demonstrate thatthe DEPSO algorithm performs better in RNN training. Also, the RNN-based model can provide meaningful insight in capturing the nonlinear dynamics of genetic networks and revealing genetic regulatory interactions.
机译:在过去的十年中,使用来自微阵列实验的时间序列基因表达数据,递归神经网络(RNN)吸引了更多的努力来推断遗传调控网络(GRN)。这对于揭示基本的细胞过程,研究基因功能以及了解它们之间的关系至关重要。但是,RNN因训练困难而闻名。传统的基于梯度下降的方法很容易陷入局部最小值,并且导数的计算也不总是可能的。在这里,研究了三种基于演化群计算技术的方法(称为差分进化(DE),粒子群优化(PSO)以及DE和PSO混合(DEPSO))在训练RNN中的性能。此外,通过识别基因相互作用来重建基因网络,这通过相应的连接权重矩阵来解释。本文研究的两个数据集的实验结果表明,DEPSO算法在RNN训练中表现更好。同样,基于RNN的模型可以为捕获遗传网络的非线性动力学和揭示遗传调控相互作用提供有意义的见解。

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