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Ensembling Extreme Learning Machines

机译:组装极限学习机

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摘要

Extreme learning machine (ELM) is a novel learning algorithm much faster than the traditional gradient-based learning algorithms for single-hidden-layer feedforward neural networks (SLFNs). Neural network ensemble is a learning paradigm where several neural networks are jointly used to solve a problem. In our work, we investigated the performance of ELMs ensemble on regression problems. A simple ensembling approach Product Index based Excluding ensemble(PIEx) was proposed to ensemble accurate and diverse member networks. The experimental results show that the ensemble can effectively improve the performance compared with the generalization ability of single ELM and PIEx outperforms Bagging and Simple Averaging. The results also show ELM training can generate diverse neural networks even though using the same training set.
机译:极限学习机(ELM)是一种新颖的学习算法,其速度比传统的基于梯度的单隐藏前馈神经网络学习算法要快得多。神经网络集成是一种学习范例,其中几个神经网络共同用于解决问题。在我们的工作中,我们调查了ELM集成在回归问题上的性能。提出了一种简单的基于集合索引的不包含集合(PIEx)的集合方法来集合准确而多样的成员网络。实验结果表明,与单个ELM和PIEx的泛化能力相比,该集成可以有效地提高性能,优于Bagging和Simple Averaging。结果还显示,即使使用相同的训练集,ELM训练也可以生成各种神经网络。

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