级联主成分最小二乘神经网络学习算法

WA Khan, S. Chung, Ching-Yuen Chan
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引用次数: 1

摘要

级联相关学习(Cascading correlation learning, CasCor)是一种构造性算法,它基于输出误差的协方差,每次添加一个隐藏单元来确定自己的网络大小和类型。它的泛化性能和计算时间取决于级联结构和连接权值的迭代调优。CasCor是为了解决反向传播(BP)的缓慢性而开发的,然而,最近的研究表明,在许多应用中,CasCor的泛化性能并不能保证是最优的。除了BP之外,由于通过数值优化技术对连接权值进行迭代调整,CasCor的学习速度可以认为是缓慢的。因此,本文针对CasCor算法的瓶颈,提出了一种改进级联结构和调优自由学习的新算法,以达到更好的泛化性能和更快的学习能力。该算法通过将一组相关的输入单元正交转换为不相关的隐藏单元来确定输入连接权,并考虑隐藏单元与输出单元的线性关系来确定输出连接权。这项研究工作的独特之处在于它不需要随机生成连接权值。通过对非线性分类和回归任务的比较研究,证明了该算法具有更好的泛化性能,学习速度比CasCor快许多倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cascade Principal Component Least Squares Neural Network Learning Algorithm
Cascading correlation learning (CasCor) is a constructive algorithm which determines its own network size and typology by adding hidden units one at a time based on covariance with output error. Its generalization performance and computational time depends on the cascade architecture and iteratively tuning of the connection weights. CasCor was developed to address the slowness of backpropagation (BP), however, recent studies have concluded that in many applications, CasCor generalization performance does not guarantee to be optimal. Apart from BP, CasCor learning speed can be considered slow because of iterative tuning of connection weights by numerical optimization techniques. Therefore, this paper addresses CasCor bottlenecks and introduces a new algorithm with improved cascade architecture and tuning free learning to achieve the objectives of better generalization performance and fast learning ability. The proposed algorithm determines input connection weights by orthogonally transforming a set of correlated input units into uncorrelated hidden units and output connection weights by considering hidden units and the output units in a linear relationship. This research work is unique in that it does not need a random generation of connection weights. A comparative study on nonlinear classification and regression tasks has proven that the proposed algorithm has better generalization performance and learns many times faster than CasCor.
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