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Learning of fuzzy cognitive maps using a niching-based multi-modal multi-agent genetic algorithm

机译:利用基于幂幂的多模态多代理遗传算法学习模糊认知地图

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摘要

Fuzzy cognitive maps (FCMs) are generally applied to model and analyze complex dynamical systems. To learn the FCM weight matrix, various efficient learning algorithms have been proposed. However, those algorithms only learn one FCM from data once. Learning only one FCM is not enough for modeling and analyzing complex dynamical systems because the learned FCM may be just a local optimum. To solve this problem, we tend to learn multiple FCMs simultaneously. To this end, the FCM learning problem is modeled as a multi-modal optimization problem. So far, niching is the most adopted method to deal with multi-modal optimization. Thus, a multi-agent genetic algorithm (MAGA), which is a popular numerical optimization algorithm, is combined with current niching methods. Then, a niching-based multi-modal multi-agent genetic algorithm is proposed for learning FCM, termed as NMMMAGA-FCM. In this paper, NMMMAGA-FCM is adopted to learn several FCMs at the same time, then chooses the optimal FCM from all candidates. In the experiments, NMMMAGA-FCM is applied to learn the FCMs from synthetic data with varying sizes and densities. The experimental results show that NMMMAGA-FCM can learn FCMs with high accuracy. In addition, NMMMAGA-FCM is validated on the benchmark datasets DREAM3 and DREAM4. The experimental results show that NMMMAGA-FCM outperforms other learning algorithms obviously, which illustrates that NMMMAGA-FCM can reconstruct gene regulatory networks (GRNs) effectively. (C) 2018 Elsevier B.V. All rights reserved.
机译:模糊认知地图(FCMS)通常应用于模型和分析复杂的动态系统。为了学习FCM权重矩阵,已经提出了各种有效的学习算法。但是,这些算法仅从数据中学习一个FCM。只学习一个FCM对于建模和分析复杂的动态系统是不够的,因为所学到的FCM可能只是一个本地最佳。为了解决这个问题,我们倾向于同时学习多个FCM。为此,FCM学习问题被建模为多模态优化问题。到目前为止,努力是处理多模态优化的最具采用的方法。因此,作为流行的数值优化算法的多代理遗传算法(Maga)与当前的幂位方法组合。然后,提出了一种用于学习FCM的基于幂的多模态多代理遗传算法,称为NMMMAGA-FCM。在本文中,采用NMMMAGA-FCM同时学习几个FCM,然后选择来自所有候选者的最佳FCM。在实验中,应用NMMMAGA-FCM以从具有不同尺寸和密度的合成数据学习FCM。实验结果表明,NMMMAGA-FCM可以高精度学习FCM。此外,NMMMAGA-FCM在基准数据集Dream3和Dream4上验证。实验结果表明,NMMMAGA-FCM显然优于其他学习算法,其说明NMMMAGA-FCM可以有效地重建基因调节网络(GRNS)。 (c)2018 Elsevier B.v.保留所有权利。

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