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An Enhanced Hierarchical Extreme Learning Machine with Random Sparse Matrix Based Autoencoder

机译:具有基于随机稀疏矩阵的自动编码器的增强型分层极端学习机

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Recently, by employing the stacked extreme learning machine (ELM) based autoencoders (ELM-AE) and sparse AEs (SAE), multilayer ELM (ML-ELM) and hierarchical ELM (H-ELM) has been developed. Compared to the conventional stacked AEs, the ML-ELM and H-ELM usually achieve better generalization performance with a significantly reduced training time. However, the ℓ1-norm based SAE may suffer the overfitting problem and it is unable to provide analytical solution leading to long training time for big data. To alleviate these deficiencies, we propose an enhanced H-ELM (EH-ELM) with a novel random sparse matrix based AE (SMA) in this paper. The contributions are in two aspects, 1) utilizing the random sparse matrix, the sparse features can be obtained; 2) the proposed SMA can provide an analytical solution so that the high computational complexity issue in SAE can be addressed. Experimental results on benchmark datasets show that the proposed EH-ELM achieves a higher recognition rate and a faster training speed than H-ELM and ML-ELM.
机译:最近,通过采用基于堆叠式极限学习机(ELM)的自动编码器(ELM-AE)和稀疏AE(SAE),已经开发了多层ELM(ML-ELM)和分层ELM(H-ELM)。与传统的堆叠式AE相比,ML-ELM和H-ELM通常可以实现更好的泛化性能,同时可以大大减少训练时间。但是,ℓ 1 基于规范的SAE可能会遇到过度拟合的问题,并且无法提供分析解决方案,从而导致对大数据的培训时间较长。为了缓解这些缺陷,我们在本文中提出了一种增强的H-ELM(EH-ELM),它具有一种基于随机稀疏矩阵的新颖AE(SMA)。贡献有两个方面:1)利用随机稀疏矩阵,可以获得稀疏特征; 2)利用随机稀疏矩阵获得稀疏特征。 2)提出的SMA可以提供一种分析解决方案,从而可以解决SAE中的高计算复杂性问题。在基准数据集上的实验结果表明,与H-ELM和ML-ELM相比,提出的EH-ELM具有更高的识别率和更快的训练速度。

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