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AutoEncoder Inspired Unsupervised Feature Selection

About

High-dimensional data in many areas such as computer vision and machine learning tasks brings in computational and analytical difficulty. Feature selection which selects a subset from observed features is a widely used approach for improving performance and effectiveness of machine learning models with high-dimensional data. In this paper, we propose a novel AutoEncoder Feature Selector (AEFS) for unsupervised feature selection which combines autoencoder regression and group lasso tasks. Compared to traditional feature selection methods, AEFS can select the most important features by excavating both linear and nonlinear information among features, which is more flexible than the conventional self-representation method for unsupervised feature selection with only linear assumptions. Experimental results on benchmark dataset show that the proposed method is superior to the state-of-the-art method.

Kai Han, Yunhe Wang, Chao Zhang, Chao Li, Chao Xu• 2017

Related benchmarks

TaskDatasetResultRank
ClassificationCOIL-20
Accuracy1
76
ClassificationMNIST
Accuracy86.4
55
ClusteringCOIL-20
ACC60
47
Image ClassificationF-MNIST
Accuracy65.6
39
ClusteringYale
Accuracy54
32
ClassificationYale
Accuracy70
28
ClassificationwarpPIE 10P
Accuracy98
26
ClassificationSMK
Accuracy76.3
26
ClassificationMadelon
Accuracy87
26
ClassificationPCMAC
Accuracy71
26
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