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The universal consistency of extreme learning machine

机译:极限学习机的通用一致性

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Extreme learning machine (ELM) can be considered as a single-hidden layer feed forward neural network (FNN)-type learning system, whose input weights and hidden layer biases are randomly assigned, while output weights need tuning. In the framework of regression, a fundamental problem of ELM learning is whether the ELM estimator is universally consistent, that is, whether it can approximate arbitrary regression function to any accuracy, provided the number of training samples is sufficiently large. The aim of this paper is two-fold. One is to verify the strongly universal consistency of the ELM estimator, and the other is to present a sufficient and the necessary condition for the activation function, where the corresponding ELM estimator is strongly universally consistent. The obtained results underlie the feasibility of ELM and provide a theoretical guidance of the selection of activation functions in ELM learning. (C) 2018 Elsevier B.V. All rights reserved.
机译:极限学习机(ELM)可以看作是单隐藏层前馈神经网络(FNN)型学习系统,其输入权重和隐藏层偏差是随机分配的,而输出权重需要调整。在回归框架中,ELM学习的一个基本问题是ELM估计量是否普遍一致,即,如果训练样本的数量足够大,则ELM估计量是否可以近似于任意精度的任意回归函数。本文的目的是双重的。一种是验证ELM估计器的强通用一致性,另一种是为激活函数提供充分和必要的条件,其中相应的ELM估计器具有强通用性。获得的结果为ELM的可行性奠定了基础,并为ELM学习中激活函数的选择提供了理论指导。 (C)2018 Elsevier B.V.保留所有权利。

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