Improved Extreme Learning Machine Based on Deep Learning and Its Application in Handwritten Digits Recognition

Xiao Xiao, Bolin Liao, Qiuqing Long, Yongjun He, J. Li, Luyang Han
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Abstract

Traditional extreme learning machine (ELM) requires a large number of hidden layer neurons in its applications, and the ability to process high-dimensional big data samples is weak. In response to the above problems, this paper proposes an improved extreme learning machine algorithm based on deep learning. This algorithm combines the double pseudo-inverse extreme learning machine (DPELM) algorithm, which has high classification accuracy and simple network structure, with the denoising autoencoder (DAE) which can extract more essential data features. Among them, DAE is used to extract the features of the data that needs to be recognized, and the DPELM mainly plays as a classifier to quickly classify and recognize the extracted features. Experimental results show that in the recognition of handwritten digits, the double pseudo-inverse extreme learning machine based on denoising autoencoder (DAE-DPELM) algorithm needs only a small number of hidden layer neurons. In addition, compared with the traditional ELM algorithm and DAE-ELM algorithm, DAE-DPELM algorithm has a higher classification accuracy.
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基于深度学习的改进极限学习机及其在手写数字识别中的应用
传统的极限学习机(ELM)在应用中需要大量的隐层神经元,处理高维大数据样本的能力较弱。针对上述问题,本文提出了一种基于深度学习的改进极限学习机算法。该算法将分类精度高、网络结构简单的双伪逆极值学习机(DPELM)算法与能够提取更多基本数据特征的去噪自编码器(DAE)算法相结合。其中,DAE用于提取需要识别的数据的特征,DPELM主要作为分类器对提取的特征进行快速分类和识别。实验结果表明,在手写体数字识别中,基于去噪自编码器(DAE-DPELM)算法的双伪逆极值学习机只需要少量的隐层神经元。此外,与传统ELM算法和DAE-ELM算法相比,DAE-DPELM算法具有更高的分类精度。
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