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A Comprehensive Study on Architecture of Neural Networks and Its Prospects in Cognitive Computing

机译:神经网络建筑综合研究及其在认知计算中的前景

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This paper proffers an overview of neural network, coupled with early neural network architecture, learning methods, and applications. Basically, neural networks are simplified models of biological nervous systems and that's why they have drawn crucial attention of research community in the domain of artificial intelligence. Basically, such networks are highly interconnected networks possessing a huge number of processing elements known as neurons. Such networks learn by examples and exhibit the mapping capabilities, generalization, fault resilience conjointly with escalated rate of information processing. In the current paper, various types of learning methods employed in case of neural networks are discussed. Subsequently, the paper details the deep neural network (DNN), its key concepts, optimization strategies, activation functions used. Afterwards, logistic regression and conventional optimization approaches are described in the paper. Finally, various applications of neural networks in various domains are included in the paper before concluding it.
机译:本文提交了神经网络的概述,耦合早期神经网络架构,学习方法和应用。基本上,神经网络是生物神经系统的简化模型,这就是为什么他们在人工智能领域中吸引了研究界的关注。基本上,这种网络是高度互连的网络,其具有称为神经元的大量处理元件。这种网络通过示例学习并展示了映射能力,泛化,故障恢复,以升级的信息处理率升级。在本文中,讨论了在神经网络中采用的各种类型的学习方法。随后,本文详细说明了深度神经网络(DNN),其关键概念,优化策略,使用的激活功能。然后,纸上描述了物流回归和传统的优化方法。最后,在结束之前,在纸上包含各个域中的神经网络的各种应用。

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