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A novel modular RBF neural network based on a brain-like partition method

机译:基于脑状分区方法的新型模块化RBF神经网络

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摘要

In this study, a modular design methodology inherited from cognitive neuroscience and neurophysiology is proposed to develop artificial neural networks, aiming to realize the powerful capability of brain—divide and conquer—when tackling complex problems. First, a density-based brain-like partition method is developed to construct the modular architecture, with a highly connected center in each sub-network as the human brain. The whole task is also divided into different sub-tasks at this stage. Then, a compact radial basis function (RBF) network with fast learning speed and desirable generalization performance is applied as the sub-network to solve the corresponding task. On the one hand, the modular structure helps to improve the ability of neural networks on complex problems by implementing divide and conquer. On the other hand, sub-networks with considerable ability could guarantee the parsimonious and generalization of the entire neural network. Finally, the novel modular RBF (NM-RBF) network is evaluated through multiple benchmark numerical experiments, and results demonstrate that the NM-RBF network is capable of constructing a relative compact architecture during a short learning process with achievable satisfactory generalization performance, showing its effectiveness and outperformance.
机译:在本研究中,提出了一种从认知神经科学和神经生理学继承的模块化设计方法,以开发人工神经网络,旨在实现大脑分割和征服的强大能力 - 在解决复杂问题时。首先,开发了一种基于密度的大脑样分配方法来构造模块化架构,每个子网中的高连接中心作为人脑。整个任务也分为此阶段的不同子任务。然后,应用具有快速学习速度和期望的泛化性能的紧凑径向基函数(RBF)网络作为子网来解决相应的任务。一方面,模块化结构有助于通过实施鸿沟来改善神经网络对复杂问题的能力。另一方面,具有相当能力的子网可以保证整个神经网络的解析和泛化。最后,通过多个基准数值实验评估新的模块化RBF(NM-RBF)网络,结果表明,NM-RBF网络能够在短期学习过程中构建相对紧凑的架构,具有可实现的令人满意的泛化性能,显示其有效性和表现优异。

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