A Hybrid Approach for Neural Network in Pattern Storage

Kumud Sachdeva, S. Aggarwal
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引用次数: 7

Abstract

Your mind does not manufacture mind. Your mind forms neural networks. Neural networks had been effectively carried out to numerous sample garage and type troubles in phrases in their mastering ability, excessive discrimination electricity, and exceptional generalization ability. The achievement of many mastering schemes isn't always assured, however, seeing that algorithms like backpropagation have many drawbacks like stepping into the nearby minima, for that reason imparting suboptimal solutions. In the case of classifying big sets and complicated patterns, the traditional neural networks are afflicted by numerous problems inclusive of the dedication of the shape and length of the network, the computational complexity, and so on. This paper introduces the neural computing techniques especially radial foundation features network. Various upgrades and trends made in an artificial neural network for rushing up training, keeping off neighborhood minima, growing the generalization capacity, and different capabilities are reviewed.
一种混合神经网络模式存储方法
你的思想不会制造思想。你的思维形成了神经网络。神经网络以其掌握能力强、判别能力强、泛化能力强等优点,有效地应用于大量的样本库和短语型故障。然而,许多主方案的实现并不总是有保证的,因为像反向传播这样的算法有许多缺点,比如进入附近的最小值,因此会给出次优解。传统的神经网络在对大集合和复杂模式进行分类时,存在着网络形状和长度的专用性、计算复杂度等诸多问题。本文介绍了神经网络计算技术,特别是径向基础特征网络。综述了人工神经网络在加速训练、保持邻域最小值、提高泛化能力和不同能力等方面的各种升级和发展趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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