Back to Search Start Over

Robust Joint Feature Weights Learning Framework.

Authors :
Yan, Hui
Yang, Jian
Yang, Jingyu
Source :
IEEE Transactions on Knowledge & Data Engineering. May2016, Vol. 28 Issue 5, p1327-1339. 13p.
Publication Year :
2016

Abstract

Feature selection, selecting the most informative subset of features, is an important research direction in dimension reduction. The combinatorial search in feature selection is essentially a binary optimization problem, known as NP hard, which can be alleviated by learning feature weights. Traditional feature weights algorithms rely on heuristic search path. These approaches neglect the interaction and dependency between different features, and thus provide no guarantee for optimality. In this paper, we propose a novel joint feature weights learning framework, which imposes both nonnegative and \ell 2,1<alternatives> <inline-graphic xlink:type="simple" xlink:href="yan-ieq1-2515613.gif"/></alternatives>-norm constraints on the feature weights matrix. The nonnegative property ensures the physical significance of learned feature weights. Meanwhile, \ell 2,1<alternatives> <inline-graphic xlink:type="simple" xlink:href="yan-ieq2-2515613.gif"/></alternatives>-norm minimization achieves joint selection of the most relevant features by exploiting the whole feature space. More importantly, an efficient iterative algorithm with proved convergence is designed to optimize a convex objective function. Using this framework as a platform, we propose new supervised and unsupervised joint feature selection methods. Particularly, in the proposed unsupervised method, nonnegative graph embedding is developed to exploit intrinsic structure in the weighted space. Comparative experiments on seven real-world data sets indicate that our framework is both effective and efficient. [ABSTRACT FROM PUBLISHER]

Details

Language :
English
ISSN :
10414347
Volume :
28
Issue :
5
Database :
Academic Search Index
Journal :
IEEE Transactions on Knowledge & Data Engineering
Publication Type :
Academic Journal
Accession number :
114283574
Full Text :
https://doi.org/10.1109/TKDE.2016.2515613