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An empirical evaluation of extreme learning machine: application to handwritten character recognition

机译:极限学习机的实证评估:应用于手写字符识别

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摘要

Extreme learning machine (ELM), a randomized learning paradigm for single hidden layer feed-forward network, has gained significant attention for solving problems in diverse domains due to its faster learning ability. The output weights in ELM are determined by an analytic procedure, while the input weights and biases are randomly generated and fixed during the training phase. The learning performance of ELM is highly sensitive to many factors such as the number of nodes in the hidden layer, the initialization of input weight and the type of activation functions in the hidden layer. Although various works on ELM have been proposed in the last decade, the effect of the all these influencing factors on classification performance has not been fully investigated yet. In this paper, we test the performance of ELM with different configurations through an empirical evaluation on three standard handwritten character datasets, namely, MNIST, ISI-Kolkata Bangla numeral, ISI-Kolkata Odia numeral and a newly developed NIT-RKL Bangla numeral dataset. Finally, we derive some best ELM figurations which can serve as general guidelines to design ELM based classifiers.
机译:极限学习机(ELM)是用于单个隐藏层前馈网络的随机学习范例,由于其更快的学习能力,在解决不同领域的问题方面引起了广泛关注。 ELM中的输出权重通过分析过程确定,而输入权重和偏差是在训练阶段随机生成和固定的。 ELM的学习性能对许多因素高度敏感,例如隐藏层中的节点数,输入权重的初始化以及隐藏层中的激活函数的类型。尽管在过去的十年中已经提出了许多有关ELM的工作,但是所有这些影响因素对分类性能的影响尚未得到充分研究。在本文中,我们通过对MNIST,ISI-Kolkata Bangla数字,ISI-Kolkata Odia数字和新开发的NIT-RKL Bangla数字数据集的三个标准手写字符数据集进行了经验评估,测试了不同配置的ELM的性能。最后,我们得出一些最佳的ELM图形,可以用作设计基于ELM的分类器的一般指南。

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