结合递归神经网络和支持向量机的时间序列分类新方法

Abdulrahman Alalshekmubarak, L. Smith
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引用次数: 32

摘要

回声状态网络(ESN)是一种相对较新的递归神经网络,已被证明可以在各种机器学习任务中实现最先进的性能。这种强大的性能结合了ESN实现的简单性,在机器学习社区得到了广泛的采用。回声状态网络的简单性源于随机分配的循环节点的权重,称为存储库,并且权重仅在输出层使用线性读出函数学习。本文提出了一种将回声状态网络与支持向量机(svm)相结合的时间序列分类方法,将输出层的线性读出函数替换为具有径向基函数核的支持向量机(svm)。通过一个阿拉伯数字语音识别任务对该模型进行了验证。众所周知的阿拉伯语口语数字数据集包含8800个阿拉伯数字0-9的实例,由88个不同的说话者(44个男性和44个女性)使用,以开发和验证建议的方法。我们系统的结果可以与Hammami et al.(2011)和p.r. Cavalin et al.(2012)引入的最先进的模型进行比较,这是使用相同数据集的文献中发现的最佳报告结果。结果表明,ESN和esnssvm的识别准确率分别为96.91%和97.45%,而其他模型的识别准确率分别为95.99%和94.04%。结果还表明,当使用较小的油藏规模时,回声状态网络和esnssvm的性能存在显著差异,在极端情况下,后者的准确率达到15%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel approach combining recurrent neural network and support vector machines for time series classification
Echo state network (ESN) is a relatively recent type of recurrent neural network that has proved to achieve state-of-the-art performance in a variety of machine-learning tasks. This robust performance that incorporates the simplicity of ESN implementation has led to wide adoption in the machine-learning community. ESN's simplicity stems from the weights of the recurrent nodes being assigned randomly, known as the reservoir, and weights are only learnt in the output layer using a linear read-out function. In this paper, we present a novel approach that combines ESN with support vector machines (SVMs) for time series classification by replacing the linear read-out function in the output layer with SVMs with the radial basis function kernel. The proposed model has been evaluated with an Arabic digits speech recognition task. The well-known Spoken Arabic Digits Dataset, which contains 8800 instances of Arabic digits 0-9 spoken by 88 different speakers (44 males and 44 females) was used to develop and validate the suggested approach. The result of our system can be compared to the state-of-the-art models introduced by Hammami et al. (2011) and P. R. Cavalin et al. (2012) , which are the best reported results found in the literature that used the same dataset. The result shows that ESN and ESNSVMs can both provide superior performance at a 96.91% and 97.45% recognition accuracy, respectively, compared with 95.99% and 94.04% for other models. The result also shows that when using a smaller reservoir size significant differences exist in the performance of ESN and ESNSVMs, as the latter approach achieves higher accuracy by more than 15% in extreme cases.
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