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A Truly Online Learning Algorithm using Hybrid Fuzzy ARTMAP and Online Extreme Learning Machine for Pattern Classification

机译:结合模糊ARTMAP和在线极限学习机的模式分类真正在线学习算法

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This paper presents a Hybrid Fuzzy ARTMAP (FAM) and Online Extreme learning machine (OELM), hereafter denoted as FAM-OELM, which enables online learning to start from the first trained data samples without having to set up an initialization phase which requires a chunk of data samples to be ready prior to training. The idea of developing FAM-OELM is motivated by the ELM concept proposed by Huang et al., for being an efficient learning algorithm that provides better generalization performance at a much faster learning speed. However, different from the batch learning ELM and its variant called the online sequential extreme learning machine which still requires an initial offline training phase before it can turn into online training, the proposed FAM-OELM showcases a framework that enable online learning to commence right from the first data sample. Here, classification can be conducted at any time during the training phase. Such appealing feature of the proposed algorithm has strictly fulfilled the criteria of being truly sequential, while many of the existing algorithms are not. In addition, FAM-OELM automatically grows hidden neuron such that the network can accommodate new information without over fitting and compromising on the knowledge learnt earlier. The simulation results reveal the efficacy and validity of FAM-OELM when it is applied to a real world application and various benchmark problems.
机译:本文提出了一种混合模糊ARTMAP(FAM)和在线极限学习机(OELM),以下简称为FAM-OELM,它使在线学习可以从第一个训练有素的数据样本开始,而无需设置需要大块的初始化阶段训练之前准备好数据样本集。 Huang等人提出的ELM概念激发了开发FAM-OELM的想法,因为它是一种有效的学习算法,可以以更快的学习速度提供更好的泛化性能。但是,不同于批处理学习ELM及其称为在线顺序极限学习机的变体,后者仍需要初始的离线培训阶段才能转化为在线培训,而拟议的FAM-OELM展示了一个框架,使在线学习从第一个数据样本。在这里,可以在训练阶段的任何时间进行分类。所提出算法的这种吸引人的特征严格地满足了真正顺序的标准,而许多现有算法却没有。此外,FAM-OELM会自动生长隐藏的神经元,从而使网络可以容纳新信息,而不会过度拟合和损害先前学习的知识。仿真结果揭示了FAM-OELM在实际应用中的有效性和有效性以及各种基准问题。

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