A novel PAINS system for SpaSMS filtering

碩士 === 雲林科技大學 === 資訊管理系碩士班 === 96 === Purpose - Spam has been a normal phenomenon, and it will be inconvenient if lots of unsolicited bulk SpaSMS messages are sent to user’s mobile phone as spam in email. The investigation of SpaSMS is rare, and therefore we try to propose a novel personalized and a...

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Main Authors: Ci-Syong Jhuang, 莊棨雄
Other Authors: Dong-Her Shih
Format: Others
Language:en_US
Published: 2008
Online Access:http://ndltd.ncl.edu.tw/handle/65929720995466842927
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spelling ndltd-TW-096YUNT53960252015-10-13T11:20:18Z http://ndltd.ncl.edu.tw/handle/65929720995466842927 A novel PAINS system for SpaSMS filtering 垃圾簡訊過濾系統之研究 Ci-Syong Jhuang 莊棨雄 碩士 雲林科技大學 資訊管理系碩士班 96 Purpose - Spam has been a normal phenomenon, and it will be inconvenient if lots of unsolicited bulk SpaSMS messages are sent to user’s mobile phone as spam in email. The investigation of SpaSMS is rare, and therefore we try to propose a novel personalized and artificial immune system added SpaSMS filtering system. Design/methodology/approach - This study tries to use two classifiers to filter SpaSMS. One is generalized classifier, and the other is personalized classifier. This research uses Naïve Bayesian algorithm to build generalized classifier and utilize artificial immune system to extract SpaSMS’s features. Personalized classifier is also created for individual through k-Nearest Neighbor algorithm. Findings - Artificial immune system and personalized filtering can improve the performance of SpaSMS filtering. Originality/value - This research takes the leading in using a total system solution in SpaSMS filtering. Moreover, this study is the first to use artificial immune system in SpaSMS’s feature extraction. In addition, this study is the first to combine generalized classifier with personalized classifier to filter SpaSMS. Thus, it can provide a better performance than Naïve Bayesian and decision tree algorithms. Dong-Her Shih 施東河 2008 學位論文 ; thesis 50 en_US
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description 碩士 === 雲林科技大學 === 資訊管理系碩士班 === 96 === Purpose - Spam has been a normal phenomenon, and it will be inconvenient if lots of unsolicited bulk SpaSMS messages are sent to user’s mobile phone as spam in email. The investigation of SpaSMS is rare, and therefore we try to propose a novel personalized and artificial immune system added SpaSMS filtering system. Design/methodology/approach - This study tries to use two classifiers to filter SpaSMS. One is generalized classifier, and the other is personalized classifier. This research uses Naïve Bayesian algorithm to build generalized classifier and utilize artificial immune system to extract SpaSMS’s features. Personalized classifier is also created for individual through k-Nearest Neighbor algorithm. Findings - Artificial immune system and personalized filtering can improve the performance of SpaSMS filtering. Originality/value - This research takes the leading in using a total system solution in SpaSMS filtering. Moreover, this study is the first to use artificial immune system in SpaSMS’s feature extraction. In addition, this study is the first to combine generalized classifier with personalized classifier to filter SpaSMS. Thus, it can provide a better performance than Naïve Bayesian and decision tree algorithms.
author2 Dong-Her Shih
author_facet Dong-Her Shih
Ci-Syong Jhuang
莊棨雄
author Ci-Syong Jhuang
莊棨雄
spellingShingle Ci-Syong Jhuang
莊棨雄
A novel PAINS system for SpaSMS filtering
author_sort Ci-Syong Jhuang
title A novel PAINS system for SpaSMS filtering
title_short A novel PAINS system for SpaSMS filtering
title_full A novel PAINS system for SpaSMS filtering
title_fullStr A novel PAINS system for SpaSMS filtering
title_full_unstemmed A novel PAINS system for SpaSMS filtering
title_sort novel pains system for spasms filtering
publishDate 2008
url http://ndltd.ncl.edu.tw/handle/65929720995466842927
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