共 114 条
[1]
Shang R(2017)Unsupervised feature selection based on self-representation sparse regression and local similarity preserving Int J Mach Learn Cybern 7 1-14
[2]
Chang J(2017)Joint embedding learning and sparse regression: a framework for unsupervised feature selection IEEE Trans Cybern 44 793-804
[3]
Jiao L(2014)Locality and similarity preserving embedding for feature selection Neurocomputing 128 304-315
[4]
Xue Y(2010)Flexible manifold embedding: a framework for semi-supervised and unsupervised dimension reduction IEEE Trans Image Process 19 1921-1932
[5]
Hou C(2013)From the idea of sparse representation to a representation-based transformation method for feature extraction Neurocomputing 113 168-176
[6]
Nie F(1991)Eigenfaces for recognition J Cognit Neurosci 3 71-86
[7]
Li X(2013)Representation learning: a review and new perspectives IEEE Trans Pattern Anal Mach Intell 35 1798-1828
[8]
Yi D(2001)An introduction to kernel-based learning algorithms IEEE Trans Neural Netw 12 181-201
[9]
Wu Y(2005)Kerenel ICA: an alternative formulation and its application to face recognition Pattern Recognit 38 1784-1787
[10]
Fang X(2000)Nonlinear dimensionality reduction by locally linear embedding Science 290 2323-6