SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches

Telecom users’ arrears forecasting is a classification problem of unbalanced data set.To deal with the problem that the traditional SVM on the unbalanced date set had a low detection accuracy of minority class,a novel method was proposed.Based on the fact that the position of classification plane wa...

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Main Authors: Chuangchuang LI, Guangyue LU, Hanglong WANG
Format: Article
Language:zho
Published: Beijing Xintong Media Co., Ltd 2017-09-01
Series:Dianxin kexue
Subjects:
Online Access:http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2017208/
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author Chuangchuang LI
Guangyue LU
Hanglong WANG
author_facet Chuangchuang LI
Guangyue LU
Hanglong WANG
author_sort Chuangchuang LI
collection DOAJ
description Telecom users’ arrears forecasting is a classification problem of unbalanced data set.To deal with the problem that the traditional SVM on the unbalanced date set had a low detection accuracy of minority class,a novel method was proposed.Based on the fact that the position of classification plane was determined by the boundary samples,the proposed method was implemented via removing some of samples closed to the classification plane to avoid the deficiency of the traditional SVM algorithm.Finally,the proposed method was compared with other approaches on unbalanced data sets.The simulation results show that the proposed method can not only increase the detection accuracy of minority but also improve the overall classification performance.
format Article
id doaj-art-5026de5635d7412f87690636277e448b
institution Kabale University
issn 1000-0801
language zho
publishDate 2017-09-01
publisher Beijing Xintong Media Co., Ltd
record_format Article
series Dianxin kexue
spelling doaj-art-5026de5635d7412f87690636277e448b2025-01-15T03:06:10ZzhoBeijing Xintong Media Co., LtdDianxin kexue1000-08012017-09-0133859159600164SVM classifier for telecom user arrears based on boundary samples-based under-sampling approachesChuangchuang LIGuangyue LUHanglong WANGTelecom users’ arrears forecasting is a classification problem of unbalanced data set.To deal with the problem that the traditional SVM on the unbalanced date set had a low detection accuracy of minority class,a novel method was proposed.Based on the fact that the position of classification plane was determined by the boundary samples,the proposed method was implemented via removing some of samples closed to the classification plane to avoid the deficiency of the traditional SVM algorithm.Finally,the proposed method was compared with other approaches on unbalanced data sets.The simulation results show that the proposed method can not only increase the detection accuracy of minority but also improve the overall classification performance.http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2017208/arrearunbalancesupport vector machineboundaryunder-sampling
spellingShingle Chuangchuang LI
Guangyue LU
Hanglong WANG
SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
Dianxin kexue
arrear
unbalance
support vector machine
boundary
under-sampling
title SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
title_full SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
title_fullStr SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
title_full_unstemmed SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
title_short SVM classifier for telecom user arrears based on boundary samples-based under-sampling approaches
title_sort svm classifier for telecom user arrears based on boundary samples based under sampling approaches
topic arrear
unbalance
support vector machine
boundary
under-sampling
url http://www.telecomsci.com/zh/article/doi/10.11959/j.issn.1000-0801.2017208/
work_keys_str_mv AT chuangchuangli svmclassifierfortelecomuserarrearsbasedonboundarysamplesbasedundersamplingapproaches
AT guangyuelu svmclassifierfortelecomuserarrearsbasedonboundarysamplesbasedundersamplingapproaches
AT hanglongwang svmclassifierfortelecomuserarrearsbasedonboundarysamplesbasedundersamplingapproaches