DocumentCode :
52033
Title :
Joint Embedding Learning and Sparse Regression: A Framework for Unsupervised Feature Selection
Author :
Chenping Hou ; Feiping Nie ; Xuelong Li ; Dongyun Yi ; Yi Wu
Author_Institution :
Dept. of Math. & Syst. Sci., Nat. Univ. of Defense Technol., Changsha, China
Volume :
44
Issue :
6
fYear :
2014
fDate :
Jun-14
Firstpage :
793
Lastpage :
804
Abstract :
Feature selection has aroused considerable research interests during the last few decades. Traditional learning-based feature selection methods separate embedding learning and feature ranking. In this paper, we propose a novel unsupervised feature selection framework, termed as the joint embedding learning and sparse regression (JELSR), in which the embedding learning and sparse regression are jointly performed. Specifically, the proposed JELSR joins embedding learning with sparse regression to perform feature selection. To show the effectiveness of the proposed framework, we also provide a method using the weight via local linear approximation and adding the ℓ2,1-norm regularization, and design an effective algorithm to solve the corresponding optimization problem. Furthermore, we also conduct some insightful discussion on the proposed feature selection approach, including the convergence analysis, computational complexity, and parameter determination. In all, the proposed framework not only provides a new perspective to view traditional methods but also evokes some other deep researches for feature selection. Compared with traditional unsupervised feature selection methods, our approach could integrate the merits of embedding learning and sparse regression. Promising experimental results on different kinds of data sets, including image, voice data and biological data, have validated the effectiveness of our proposed algorithm.
Keywords :
approximation theory; computational complexity; convergence of numerical methods; feature selection; regression analysis; unsupervised learning; ℓ2,1-norm regularization; JELSR; biological data; computational complexity; convergence analysis; data sets; image data; joint embedding learning and sparse regression; local linear approximation; optimization problem; parameter determination; unsupervised feature selection framework; voice data; Feature extraction; Joints; Laplace equations; Linear approximation; Linear programming; Manifolds; Vectors; Embedding learning; feature selection; pattern recognition; sparse regression;
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TCYB.2013.2272642
Filename :
6565365
Link To Document :
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