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Modified bidirectional extreme learning machine with Gram-Schmidt orthogonalization method

机译:改进的Gram-Schmidt正交化双向极限学习机

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Incremental extreme learning machine has been proved to be an efficient and simple universal approximator. However, the network architecture may be very large due to the inefficient nodes which have a tiny effect on reducing the residual error. More to the point, the output weights are not the least square solution. To reduce such inefficient nodes, a method called bidirectional ELM (B-ELM), which analytically calculates the input weights of even nodes, was proposed. By analyzing, B-ELM can be further improved to achieve better performance on compacting structure. This paper proposes the modified B-ELM (MB-ELM), in which the orthogonalization method is involved in B-ELM to orthogonalize the output vectors of hidden nodes and the resulting vectors are taken as the output vectors. MB-ELM can greatly diminish inefficient nodes and obtain a preferable output weight vector which is the least square solution, so that it has better convergence rate and a more compact network architecture. Specifically, it has been proved that in theory, MB-ELM can reduce residual error to zero by adding only two nodes into network. Simulation results verify these conclusions and show that MB-ELM can reach smaller low limit of residual error than other I-ELM methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:事实证明,增量式极限学习机是一种有效且简单的通用逼近器。但是,由于节点效率低下,网络体系结构可能非常大,这对减少残留错误影响很小。更重要的是,输出权重不是最小二乘解。为了减少这种效率低的节点,提出了一种称为双向ELM(B-ELM)的方法,该方法可以分析计算偶数节点的输入权重。通过分析,可以进一步改进B-ELM,从而在压实结构上获得更好的性能。本文提出了一种改进的B-ELM(MB-ELM),其中在B-ELM中采用正交化方法对隐藏节点的输出向量进行正交处理,并将所得向量作为输出向量。 MB-ELM可以大大减少效率低的节点,并获得最佳的输出权重向量(最小二乘解),从而具有更好的收敛速度和更紧凑的网络架构。具体而言,已经证明,从理论上讲,MB-ELM可以通过仅将两个节点添加到网络中来将残留误差减少到零。仿真结果验证了这些结论,并表明MB-ELM可以达到比其他I-ELM方法更小的残差下限。 (C)2018 Elsevier B.V.保留所有权利。

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