Cooperation of Neural Networks for Spoken Digit Classification

Nan Wu, Jing-Min Dai, Ziling Wei, Xueqi Duan, Shih-Chieh Su
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Abstract

Notably, all neural network models are trained by using gradient descent, and by far, the most successful approach for machine learning is to use gradient descent. However, this is a greedy algorithm and hits some of the biggest open problems in the neural networks. By using gradient descent, it is not guaranteed that a better solution cannot be found. Here, this article has presented an empirical study of the performance of two hidden layers’ neural networks. It gives practical methods to improve the accuracy of neural networks: cooperation method of neural network. In this study, our group applied the data augmentation method by adding noise into the training data set and compared 3 kinds of training methods: batch gradient descent (BGD), stochastic gradient descent (SGD), and batch stochastic gradient descent (BSGD). According to cooperating the neural networks, the performance of these neural networks has improved compared to baseline neural networks by 47% (PEG (generalization classification error probability) of 9 neural networks in cooperation is 0.071). Finally, the real-time classification using a cooperation method which has PEG equals 0.04 (single neural networks’ PEG is 0.104), further proves the results that cooperation improves the performance of neural networks.
语音数字分类中神经网络的协同作用
值得注意的是,所有的神经网络模型训练通过使用梯度下降,而且到目前为止,最成功的机器学习方法是使用梯度下降法。然而,这是一个贪心算法,并且触及了神经网络中一些最大的开放问题。使用梯度下降法,不能保证不能找到更好的解。本文对两个隐层神经网络的性能进行了实证研究。给出了提高神经网络精度的实用方法:神经网络协同法。在本研究中,我们采用了在训练数据集中加入噪声的数据增强方法,并比较了3种训练方法:批梯度下降(BGD)、随机梯度下降(SGD)和批随机梯度下降(BSGD)。通过对神经网络的合作,这些神经网络的性能比基线神经网络提高了47%(9个神经网络合作的泛化分类错误概率为0.071)。最后,采用PEG为0.04(单个神经网络的PEG为0.104)的协作方法进行实时分类,进一步证明了协作提高神经网络性能的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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