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首页> 外文期刊>IEEE Transactions on Neural Networks >Global analysis of Oja's flow for neural networks
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Global analysis of Oja's flow for neural networks

机译:Oja神经网络流量的全局分析

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摘要

A detailed study of Oja's learning equation in neural networks is undertaken in this paper. Not only are such fundamental issues as existence, uniqueness, and representation of solutions completely resolved, but also the convergence issue is resolved. It is shown that the solution of Oja's equation is exponentially convergent to an equilibrium from any initial value. Moreover, the necessary and sufficient conditions are given on the initial value for the solution to converge to a dominant eigenspace of the associated autocorrelation matrix. As a by-product, this result confirms one of Oja's conjectures that the solution converges to the principal eigenspace from almost all initial values. Some other characteristics of the limiting solution are also revealed. These facilitate the determination of the limiting solution in advance using only the initial information. Two examples are analyzed demonstrating the explicit dependence of the limiting solution on the initial value. In another respect, it is found that Oja's equation is the gradient flow of generalized Rayleigh quotients on a Stiefel manifold.
机译:本文对神经网络中Oja的学习方程进行了详细研究。不仅解决了存在性,唯一性和解决方案表示性等基本问题,而且收敛性问题也得到了解决。结果表明,Oja方程的解从任何初始值呈指数收敛到平衡。此外,在初始值上给出了必要条件和充分条件,以使解收敛到相关自相关矩阵的主导本征空间。作为副产品,该结果证实了Oja的一种猜想,即该解决方案从几乎所有初始值收敛到主本征空间。还揭示了极限解决方案的其他一些特征。这些有助于仅使用初始信息预先确定极限解。分析了两个例子,证明了极限解对初始值的明确依赖性。在另一方面,发现Oja方程是Stiefel流形上广义Rayleigh商的梯度流。

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