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A comparison of nonlinear optimization methods for supervised learning in multilayer feedforward neural networks

机译:多层前馈神经网络中监督学习的非线性优化方法比较

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摘要

One impediment to the use of neural networks in pattern classification problems is the excessive time required for supervised learning in larger multilayer feedforward networks. The use of nonlinear optimization techniques to perform neural network training offers a means of reducing that computing time. Two key issues in the implementation of nonlinear programming are the choice of a method for computing search direction and the degree of accuracy required of the subsequent line search. This paper examines these issues through a designed experiment using six different pattern classification tasks, four search direction methods (conjugate gradient, quasi-Newton, and two levels of limited memory quasi-Newton), and three levels of line search accuracy. It was found that for the simplest pattern classification problems, the conjugate gradient performed well. For more complicated pattern classification problems, the limited memory BFGS or the BFGS should be preferred. For very large problems, the best choice seems to be the limited memory BFGS. It was also determined that, for the line search methods used in this study, increasing accuracy did not improve efficiency.
机译:在模式分类问题中使用神经网络的一个障碍是在较大的多层前馈网络中有监督学习所需的时间过多。使用非线性优化技术执行神经网络训练提供了一种减少计算时间的方法。非线性编程实现中的两个关键问题是计算搜索方向的方法的选择以及后续行搜索所需的准确度。本文通过使用六个不同模式分类任务,四个搜索方向方法(共轭梯度,拟牛顿和两个级别的有限存储拟牛顿)以及三个级别的线搜索精度的设计实验,研究了这些问题。发现对于最简单的模式分类问题,共轭梯度表现良好。对于更复杂的模式分类问题,应首选有限内存BFGS或BFGS。对于非常大的问题,最好的选择似乎是有限的内存BFGS。还确定,对于本研究中使用的线搜索方法,提高准确性不会提高效率。

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