Robust Extreme Learning Machine Based on p-order Laplace Kernel-Induced Loss Function
Liutao Luo,
Kuaini Wang,
Qiang Lin
Abstract:Since the datasets of the practical problems are usually affected by various noises and outliers, the traditional extreme learning machine (ELM) shows low prediction accuracy and significant fluctuation of prediction results when learning such datasets. In order to overcome this shortcoming, the l2 loss function is replaced by the correntropy loss function induced by the p-order Laplace kernel in the traditional ELM. Correntropy is a local similarity measure, which can reduce the impact of outliers in learning… Show more
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