Title :
Semi-supervised local-learning-based feature selection
Author :
Wang, Jim Jing-Yan ; Jin Yao ; Yijun Sun
Author_Institution :
SUNY - Univ. at Buffalo, Buffalo, NY, USA
Abstract :
Local-learning-based feature selection has been successfully applied to high-dimensional data analysis. It utilizes class labels to define a margin for each data sample and selects the most discriminative features by maximizing the margins with regard to a feature weight vector. However, it requires that all data samples are labeled, which makes it unsuitable for semi-supervised learning where only a handful of training samples are labeled while most are unlabeled. To address this issue, we herein propose a new semi-supervised local-learning-based feature selection method. The basic idea is to learn the class labels of unlabeled samples in a new feature subspace induced by the learned feature weights, and then use the learned class labels to define the margins for feature weight learning. By constructing and optimizing a unified objective function, the feature weights and class labels are learned simultaneously in an iterative algorithm. The experiments performed on some benchmark data sets show the advantage of the proposed algorithm over stat-of-the-art semi-supervised feature selection methods.
Keywords :
feature selection; iterative methods; learning (artificial intelligence); optimisation; benchmark data sets; data labelling; data margin maximization; feature subspace; feature weight learning margin; feature weight vector; high-dimensional data analysis; iterative algorithm; learned class labels; semisupervised local-learning-based feature selection; unified objective function construction; unified objective function optimization; unlabeled data; Educational institutions; Face; Image reconstruction; Manifolds; Optimization; Training; Vectors;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889591