A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem

Sparse representation has been successfully used in pattern recognition and machine learning. However, most existing sparse representation based classification (SRC) methods are to achieve the highest classification accuracy, assuming the same losses for different misclassifications. This assumption...

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Main Authors: Zhenbing Liu, Chunyang Gao, Huihua Yang, Qijia He
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2016/8035089
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spelling doaj-e384b82bf30b4bb29bc2a7cf4394afc32021-07-02T01:55:10ZengHindawi LimitedScientific Programming1058-92441875-919X2016-01-01201610.1155/2016/80350898035089A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance ProblemZhenbing Liu0Chunyang Gao1Huihua Yang2Qijia He3School of Computer and Information Security, Guilin University of Electronic Technology, Guilin 541004, ChinaSchool of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, ChinaSchool of Computer and Information Security, Guilin University of Electronic Technology, Guilin 541004, ChinaSchool of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, ChinaSparse representation has been successfully used in pattern recognition and machine learning. However, most existing sparse representation based classification (SRC) methods are to achieve the highest classification accuracy, assuming the same losses for different misclassifications. This assumption, however, may not hold in many practical applications as different types of misclassification could lead to different losses. In real-world application, much data sets are imbalanced of the class distribution. To address these problems, we propose a cost-sensitive sparse representation based classification (CSSRC) for class-imbalance problem method by using probabilistic modeling. Unlike traditional SRC methods, we predict the class label of test samples by minimizing the misclassification losses, which are obtained via computing the posterior probabilities. Experimental results on the UCI databases validate the efficacy of the proposed approach on average misclassification cost, positive class misclassification rate, and negative class misclassification rate. In addition, we sampled test samples and training samples with different imbalance ratio and use F-measure, G-mean, classification accuracy, and running time to evaluate the performance of the proposed method. The experiments show that our proposed method performs competitively compared to SRC, CSSVM, and CS4VM.http://dx.doi.org/10.1155/2016/8035089
collection DOAJ
language English
format Article
sources DOAJ
author Zhenbing Liu
Chunyang Gao
Huihua Yang
Qijia He
spellingShingle Zhenbing Liu
Chunyang Gao
Huihua Yang
Qijia He
A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
Scientific Programming
author_facet Zhenbing Liu
Chunyang Gao
Huihua Yang
Qijia He
author_sort Zhenbing Liu
title A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
title_short A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
title_full A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
title_fullStr A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
title_full_unstemmed A Cost-Sensitive Sparse Representation Based Classification for Class-Imbalance Problem
title_sort cost-sensitive sparse representation based classification for class-imbalance problem
publisher Hindawi Limited
series Scientific Programming
issn 1058-9244
1875-919X
publishDate 2016-01-01
description Sparse representation has been successfully used in pattern recognition and machine learning. However, most existing sparse representation based classification (SRC) methods are to achieve the highest classification accuracy, assuming the same losses for different misclassifications. This assumption, however, may not hold in many practical applications as different types of misclassification could lead to different losses. In real-world application, much data sets are imbalanced of the class distribution. To address these problems, we propose a cost-sensitive sparse representation based classification (CSSRC) for class-imbalance problem method by using probabilistic modeling. Unlike traditional SRC methods, we predict the class label of test samples by minimizing the misclassification losses, which are obtained via computing the posterior probabilities. Experimental results on the UCI databases validate the efficacy of the proposed approach on average misclassification cost, positive class misclassification rate, and negative class misclassification rate. In addition, we sampled test samples and training samples with different imbalance ratio and use F-measure, G-mean, classification accuracy, and running time to evaluate the performance of the proposed method. The experiments show that our proposed method performs competitively compared to SRC, CSSVM, and CS4VM.
url http://dx.doi.org/10.1155/2016/8035089
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AT zhenbingliu costsensitivesparserepresentationbasedclassificationforclassimbalanceproblem
AT chunyanggao costsensitivesparserepresentationbasedclassificationforclassimbalanceproblem
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