回归的极限学习机集合

Atmane Khellal, Hongbin Ma, Qing Fei
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引用次数: 3

摘要

回归作为机器学习的一项特殊任务,在数据驱动的建模中发挥着至关重要的作用,它通过使用一组输入输出数据,在没有任何关于系统的明确知识的情况下,找到系统状态变量之间的联系。为了提高预测性能和最大限度地提高训练速度,我们提出了一个完全可学习的极限学习机(elm)集合用于回归。该方法使用ELM算法学习不同个体模型的组合,该算法用于最小化网络参数的预测误差和范数,从而在Bartlett理论下获得更高的泛化性能。此外,基于平均的ELM集成可以看作是我们模型的一个特殊情况。在许多标准回归基准数据集上进行了大量实验,并与不同模型进行了比较。实验结果表明,该方法在泛化性能和训练速度上都达到了较好的效果。此外,研究了不同超参数对模型预测误差和训练速度的影响,为实际应用提供了有意义的指导。
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Ensemble of Extreme Learning Machines for Regression
Regression, as a particular task of machine learning, performs a vital part in data-driven modeling, by finding the connections between the system state variables without any explicit knowledge about the system, using a collection of input-output data. To enhance the prediction performance and maximize the training speed, we propose a fully learnable ensemble of Extreme Learning Machines (ELMs) for regression. The developed approach learns the combination of different individual models, using the ELM algorithm, which is applied to minimize both the prediction error and the norm of the network parameters, which leads to higher generalization performance under Bartlett’s theory. Moreover, the average based ELM ensemble may be viewed as a particular case of our model. Extensive experiments on many standard regression benchmark datasets have been carried out, and comparison with different models has been performed. The experimental findings confirm that the proposed ensemble can reach competitive results in term of the generalization performance, and the training speed. Furthermore, the influence of different hyperparameters on the performance, in term of the prediction error and the training speed, of the developed model has been investigated to provide a meaningful guideline to practical applications.
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