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子空间结构保持的多层极限学习机自编码器
引用本文:陈晓云,陈媛.子空间结构保持的多层极限学习机自编码器[J].自动化学报,2022,48(4):1091-1104.
作者姓名:陈晓云  陈媛
作者单位:1.福州大学数学与计算机科学学院 福州 350116
基金项目:国家自然科学基金(11571074)资助~~;
摘    要:处理高维复杂数据的聚类问题,通常需先降维后聚类,但常用的降维方法未考虑数据的同类聚集性和样本间相关关系,难以保证降维方法与聚类算法相匹配,从而导致聚类信息损失.非线性无监督降维方法极限学习机自编码器(Ex-treme learning machine,ELM-AE)因其学习速度快、泛化性能好,近年来被广泛应用于降维及去...

关 键 词:多层极限学习机  自编码器  子空间学习  降维
收稿时间:2020-08-26

Multi-layer Extreme Learning Machine Autoencoder With Subspace Structure Preserving
Affiliation:1.College of Mathematics and Computer Science, Fuzhou University, Fuzhou 350116
Abstract:To deal with the clustering problem of high-dimensional complex data, it is usually reguired to reduce the dimensionality and then cluster, but the common dimensional reduction method does not consider the clustering characteristic of the data and the correlation between the samples, so it is difficult to ensure that the dimensional reduction method matches the clustering algorithm, which leads to the loss of clustering information. The nonlinear unsupervised dimensionality reduction method extreme learning machine autoencoder (ELM-AE) has been widely used in dimensionality reduction and denoising in recent years because of its fast learning speed and good generalization performance. In order to maintain the original subspace structure when high-dimensional data is projected into a low-dimensional space, the dimensional reduction method ML-SELM-AE is proposed. This method captures the deep features of the sample set by using the multi-layer extreme learning machine autoencoder while maintaining multi-subspace structure of clustered samples by self-representation model. Experimental results show that the method can effectively improve the clustering accuracy and achieve higher learning efficiency on UCI data, EEG data and gene expression data.
Keywords:
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