TY - JOUR
T1 - Soft Label Guided Unsupervised Discriminative Sparse Subspace Feature Selection
AU - Chen, Keding
AU - Peng, Yong
AU - Nie, Feiping
AU - Kong, Wanzeng
N1 - Publisher Copyright:
© The Author(s) under exclusive licence to The Classification Society 2024.
PY - 2024/3
Y1 - 2024/3
N2 - Feature selection and subspace learning are two primary methods to achieve data dimensionality reduction and discriminability enhancement. However, data label information is unavailable in unsupervised learning to guide the dimensionality reduction process. To this end, we propose a soft label guided unsupervised discriminative sparse subspace feature selection (UDS2FS) model in this paper, which consists of two superiorities in comparison with the existing studies. On the one hand, UDS2FS aims to find a discriminative subspace to simultaneously maximize the between-class data scatter and minimize the within-class scatter. On the other hand, UDS2FS estimates the data label information in the learned subspace, which further serves as the soft labels to guide the discriminative subspace learning process. Moreover, the ℓ2,0-norm is imposed to achieve row sparsity of the subspace projection matrix, which is parameter-free and more stable compared to the ℓ2,1-norm. Experimental studies to evaluate the performance of UDS2FS are performed from three aspects, i.e., a synthetic data set to check its iterative optimization process, several toy data sets to visualize the feature selection effect, and some benchmark data sets to examine the clustering performance of UDS2FS. From the obtained results, UDS2FS exhibits competitive performance in joint subspace learning and feature selection in comparison with some related models.
AB - Feature selection and subspace learning are two primary methods to achieve data dimensionality reduction and discriminability enhancement. However, data label information is unavailable in unsupervised learning to guide the dimensionality reduction process. To this end, we propose a soft label guided unsupervised discriminative sparse subspace feature selection (UDS2FS) model in this paper, which consists of two superiorities in comparison with the existing studies. On the one hand, UDS2FS aims to find a discriminative subspace to simultaneously maximize the between-class data scatter and minimize the within-class scatter. On the other hand, UDS2FS estimates the data label information in the learned subspace, which further serves as the soft labels to guide the discriminative subspace learning process. Moreover, the ℓ2,0-norm is imposed to achieve row sparsity of the subspace projection matrix, which is parameter-free and more stable compared to the ℓ2,1-norm. Experimental studies to evaluate the performance of UDS2FS are performed from three aspects, i.e., a synthetic data set to check its iterative optimization process, several toy data sets to visualize the feature selection effect, and some benchmark data sets to examine the clustering performance of UDS2FS. From the obtained results, UDS2FS exhibits competitive performance in joint subspace learning and feature selection in comparison with some related models.
KW - Clustering
KW - Feature selection
KW - Joint optimization
KW - Soft label
KW - Subspace learning
UR - http://www.scopus.com/inward/record.url?scp=85183054219&partnerID=8YFLogxK
U2 - 10.1007/s00357-024-09462-6
DO - 10.1007/s00357-024-09462-6
M3 - 文章
AN - SCOPUS:85183054219
SN - 0176-4268
VL - 41
SP - 129
EP - 157
JO - Journal of Classification
JF - Journal of Classification
IS - 1
ER -