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首页> 外文期刊>IEEE Transactions on Neural Networks >Gradient descent learning algorithm overview: a general dynamical systems perspective
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Gradient descent learning algorithm overview: a general dynamical systems perspective

机译:梯度下降学习算法概述:一般动力学系统的观点

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摘要

Gives a unified treatment of gradient descent learning algorithms for neural networks using a general framework of dynamical systems. This general approach organizes and simplifies all the known algorithms and results which have been originally derived for different problems (fixed point/trajectory learning), for different models (discrete/continuous), for different architectures (forward/recurrent), and using different techniques (backpropagation, variational calculus, adjoint methods, etc.). The general approach can also be applied to derive new algorithms. The author then briefly examines some of the complexity issues and limitations intrinsic to gradient descent learning. Throughout the paper, the author focuses on the problem of trajectory learning.
机译:使用动力学系统的一般框架对神经网络的梯度下降学习算法进行统一处理。这种通用方法组织并简化了所有已知算法和结果,这些算法和结果最初是针对不同的问题(不动点/轨迹学习),不同的模型(离散/连续),不同的体系结构(正向/递归)以及使用不同的技术而得出的。 (反向传播,变分演算,伴随方法等)。通用方法也可以应用于导出新算法。然后,作者简要检查了梯度下降学习固有的一些复杂性问题和局限性。在整篇文章中,作者主要关注轨迹学习问题。

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