Open AccessProceedings Article
Embedded unsupervised feature selection
Suhang Wang,Jiliang Tang,Huan Liu +2 more
- 25 Jan 2015
- Vol. 29, Iss: 1, pp 470-476
TL;DR: A novel unsupervised feature selection algorithm EUFS is proposed, which directly embeds feature selection into a clustering algorithm via sparse learning without the transformation, and the Alternating Direction Method of Multipliers is used to address the optimization problem of EUFS.
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Abstract: Sparse learning has been proven to be a powerful technique in supervised feature selection, which allows to embed feature selection into the classification (or regression) problem. In recent years, increasing attention has been on applying spare learning in unsupervised feature selection. Due to the lack of label information, the vast majority of these algorithms usually generate cluster labels via clustering algorithms and then formulate unsupervised feature selection as sparse learning based supervised feature selection with these generated cluster labels. In this paper, we propose a novel unsupervised feature selection algorithm EUFS, which directly embeds feature selection into a clustering algorithm via sparse learning without the transformation. The Alternating Direction Method of Multipliers is used to address the optimization problem of EUFS. Experimental results on various benchmark datasets demonstrate the effectiveness of the proposed framework EUFS.
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Citations
Feature Selection: A Data Perspective
TL;DR: This survey revisits feature selection research from a data perspective and reviews representative feature selection algorithms for conventional data, structured data, heterogeneous data and streaming data, and categorizes them into four main groups: similarity- based, information-theoretical-based, sparse-learning-based and statistical-based.
Sparsity preserving projections with applications to face recognition
TL;DR: A new unsupervised DR method called sparsity preserving projections (SPP), which aims to preserve the sparse reconstructive relationship of the data, which is achieved by minimizing a L1 regularization-related objective function.
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A review of unsupervised feature selection methods
TL;DR: A comprehensive and structured review of the most relevant and recent unsupervised feature selection methods reported in the literature is provided and a taxonomy of these methods is presented.
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A Survey on Feature Selection
Jianyu Miao,Lingfeng Niu +1 more
TL;DR: The experimental results show that unsupervised feature selection algorithms benefits machine learning tasks improving the performance of clustering.
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•Proceedings Article
Unsupervised feature selection with structured graph optimization
Feiping Nie,Wei Zhu,Xuelong Li +2 more
- 12 Feb 2016
TL;DR: This work proposes an unsupervised feature selection approach which performs feature selection and local structure learning simultaneously, and constrain the similarity matrix to make it contain more accurate information of data structure, thus the proposed approach can select more valuable features.
References
•Book
Distributed Optimization and Statistical Learning Via the Alternating Direction Method of Multipliers
Stephen Boyd,Neal Parikh,Eric Chu,Borja Peleato,Jonathan Eckstein +4 more
- 23 May 2011
TL;DR: It is argued that the alternating direction method of multipliers is well suited to distributed convex optimization, and in particular to large-scale problems arising in statistics, machine learning, and related areas.
An introduction to variable and feature selection
Isabelle Guyon,André Elisseeff +1 more
TL;DR: The contributions of this special issue cover a wide range of aspects of variable selection: providing a better definition of the objective function, feature construction, feature ranking, multivariate feature selection, efficient search methods, and feature validity assessment methods.
A tutorial on spectral clustering
TL;DR: In this article, the authors present the most common spectral clustering algorithms, and derive those algorithms from scratch by several different approaches, and discuss the advantages and disadvantages of these algorithms.
An introduction to variable and feature selection
GuyonIsabelle,ElisseeffAndré +1 more
TL;DR: In this paper, variable and feature selection have become the focus of much research in areas of application for which datasets with tens or hundreds of thousands of variables are available, such as t...
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Gene expression correlates of clinical prostate cancer behavior.
Dinesh Singh,Phillip G. Febbo,Phillip G. Febbo,Kenneth N. Ross,Donald G. Jackson,Judith Manola,Christine Ladd,Pablo Tamayo,Andrew A. Renshaw,Anthony V. D'Amico,Jerome P. Richie,Eric S. Lander,Massimo Loda,Philip W. Kantoff,Todd R. Golub,William R. Sellers +15 more
TL;DR: The results support the notion that the clinical behavior of prostate cancer is linked to underlying gene expression differences that are detectable at the time of diagnosis.
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