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A comparative analysis of support vector machines and extreme learning machines

机译:支持向量机与极限学习机的比较分析

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The theory of extreme learning machines (ELMs) has recently become increasingly popular. As a new learning algorithm for single-hidden-layer feed-forward neural networks, an ELM offers the advantages of low computational cost, good generalization ability, and ease of implementation. Hence the comparison and model selection between ELMs and other kinds of state-of-the-art machine learning approaches has become significant and has attracted many research efforts. This paper performs a comparative analysis of the basic ELMs and support vector machines (SVMs) from two viewpoints that are different from previous works: one is the Vapnik-Chervonenkis (VC) dimension, and the other is their performance under different training sample sizes. It is shown that the VC dimension of an ELM is equal to the number of hidden nodes of the ELM with probability one. Additionally, their generalization ability and computational complexity are exhibited with changing training sample size. ELMs have weaker generalization ability than SVMs for small sample but can generalize as well as SVMs for large sample. Remarkably, great superiority in computational speed especially for large-scale sample problems is found in ELMs. The results obtained can provide insight into the essential relationship between them, and can also serve as complementary knowledge for their past experimental and theoretical comparisons.
机译:极限学习机(ELM)的理论最近变得越来越流行。作为单隐藏前馈神经网络的一种新的学习算法,ELM具有计算成本低,泛化能力强,易于实现的优点。因此,ELM与其他类型的最新机器学习方法之间的比较和模型选择变得很重要,并且吸引了许多研究工作。本文从与先前工作不同的两个观点对基本ELM和支持向量机(SVM)进行了比较分析:一个是Vapnik-Chervonenkis(VC)维度,另一个是它们在不同训练样本量下的性能。结果表明,ELM的VC维等于概率为1的ELM的隐藏节点数。此外,它们的泛化能力和计算复杂性随训练样本大小的变化而展现。对于小样本,ELM与SVM相比,泛化能力较弱,但对于大样本,ELM可以与SVM泛化。值得注意的是,在ELM中发现了计算速度的巨大优势,特别是对于大规模样本问题。获得的结果可以洞悉它们之间的基本关系,也可以作为它们过去的实验和理论比较的补充知识。

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