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Bidirectional Extreme Learning Machine for Regression Problem and Its Learning Effectiveness

机译:回归问题的双向极限学习机及其学习效果

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摘要

It is clear that the learning effectiveness and learning speed of neural networks are in general far slower than required, which has been a major bottleneck for many applications. Recently, a simple and efficient learning method, referred to as extreme learning machine (ELM), was proposed by Huang , which has shown that, compared to some conventional methods, the training time of neural networks can be reduced by a thousand times. However, one of the open problems in ELM research is whether the number of hidden nodes can be further reduced without affecting learning effectiveness. This brief proposes a new learning algorithm, called bidirectional extreme learning machine (B-ELM), in which some hidden nodes are not randomly selected. In theory, this algorithm tends to reduce network output error to 0 at an extremely early learning stage. Furthermore, we find a relationship between the network output error and the network output weights in the proposed B-ELM. Simulation results demonstrate that the proposed method can be tens to hundreds of times faster than other incremental ELM algorithms.
机译:显然,神经网络的学习效率和学习速度通常远远低于所需的速度,这已成为许多应用程序的主要瓶颈。最近,Huang提出了一种简单有效的学习方法,称为极限学习机(ELM),该方法表明,与某些传统方法相比,神经网络的训练时间可减少千倍。但是,ELM研究的一个开放问题是,是否可以在不影响学习效果的前提下进一步减少隐藏节点的数量。这份摘要提出了一种新的学习算法,称为双向极限学习机(B-ELM),其中一些隐藏节点不是随机选择的。从理论上讲,该算法倾向于在极其早期的学习阶段将网络输出错误降低到0。此外,我们在提出的B-ELM中发现了网络输出误差与网络输出权重之间的关系。仿真结果表明,所提出的方法可以比其他增量式ELM算法快数十至数百倍。

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