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Supervised Extreme Learning Machine-Based Auto-Encoder for Discriminative Feature Learning

机译:基于极端学习机的自动编码器进行歧视特征学习

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摘要

In this paper, a Supervised Extreme Learning Machine-based Auto-Encoder (SELM-AE) is proposed for discriminative Feature Learning. Different from traditional ELM-AE (designed based on data information X only), SELM-AE is designed based on both data information X and label information T. In detail, SELM-AE not only minimizes the reconstruction error of input data but also minimizes the intraclass distance and maximizes the inter-class distance in the new feature space. Under this way, the new data representation extracted by proposed SELM-AE is more discriminative than traditional ELM-AE for further classification. Then multiple SELM-AEs are stacked layer by layer to develop a new multi-layer perceptron (MLP) network called ML-SAE-ELM. Benefit from SELM-AE, the proposed ML-SAE-ELM is highly effective on classification than ELM-AE based MLP. Moreover, different from ELM-AE based MLP that requires large number of hidden nodes to achieve satisfactory accuracy, ML-SAE-ELM usually takes very small number of hidden nodes on both feature learning and classification stages to achieve better accuracy, which highly lightens the network memory requirement. The proposed method has been evaluated over 13 benchmark binary and multi-class datasets and one complicated image dataset. As shown in the experimental results, through the visualization of data representation, the proposed SELM-AE extracts more discriminative data representation than ELM-AE. Moreover, the shallow ML-SAE-ELM with smaller hidden nodes achieves higher classification accuracy than hierarchical ELM (a commonly used effective ELM-AE based MLP) on most evaluated datasets.
机译:在本文中,提出了一种基于监督的基于极端学习机的自动编码器(Selm-AE),用于鉴别特征学习。与传统的ELM-AE不同(基于数据信息x仅设计),SELM-AE基于数据信息X和标签信息T.详细设计,SELM-AE不仅最大限度地减少了输入数据的重建误差,而且最小化腹部距离并最大化新功能空间中的帧间距离。在这种方式下,提出的Selm-AE提取的新数据表示比传统的ELM-AE更差异,以进一步分类。然后,多个SELM-AES按层堆叠层,以开发一个名为ML-SAE-ELM的新的多层Perceptron(MLP)网络。从SELM-AE中受益,所提出的ML-SAE-ELM比基于ELM-AE的MLP在分类上非常有效。此外,不同于基于ELM-AE的MLP,需要大量的隐藏节点以实现令人满意的精度,ML-SAE-ELM通常在特征学习和分类阶段上采用非常少量的隐藏节点以实现更好的准确性,这极高减轻了网络内存要求。已经通过13个基准二进制和多类数据集和一个复杂的图像数据集进行了评估。如实验结果所示,通过数据表示的可视化,所提出的Selm-AE提取比ELM-AE更多的辨别数据表示。此外,具有较小隐藏节点的浅ML-SAE-ELM比在大多数评估的数据集上实现比分层ELM(常用的有效ELM-AE的MLP)更高的分类精度。

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