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Linear SVM-based Android malware detection for reliable IoT services
Current many Internet of Things (IoT) services are monitored and controlled through smartphone applications. By combining IoT with smartphones, many convenient IoT services have been provided to users. However, there are adverse underlying effects in such services including invasion of privacy and i...
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Published in: | Journal of Applied Mathematics 2014 |
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Format: | Report |
Language: | English |
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container_title | Journal of Applied Mathematics |
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creator | Ham, Hyo-Sik Kim, Hwan-Hee Kim, Myung-Sup Choi, Mi-Jung |
description | Current many Internet of Things (IoT) services are monitored and controlled through smartphone applications. By combining IoT with smartphones, many convenient IoT services have been provided to users. However, there are adverse underlying effects in such services including invasion of privacy and information leakage. In most cases, mobile devices have become cluttered with important personal user information as various services and contents are provided through them. Accordingly, attackers are expanding the scope of their attacks beyond the existing PC and Internet environment into mobile devices. In this paper, we apply a linear support vector machine (SVM) to detect Android malware and compare the malware detection performance of SVM with that of other machine learning classifiers. Through experimental validation, we show that the SVM outperforms other machine learning classifiers. |
doi_str_mv | 10.1155/2014/594501 |
format | report |
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fulltext | fulltext |
identifier | ISSN: 1110-757X |
ispartof | Journal of Applied Mathematics, 2014 |
issn | 1110-757X |
language | eng |
recordid | cdi_gale_infotracacademiconefile_A424531427 |
source | Publicly Available Content Database (Proquest) (PQ_SDU_P3); Wiley_OA刊; IngentaConnect Journals |
subjects | Analysis Machine learning Mobile devices Safety and security measures Spyware |
title | Linear SVM-based Android malware detection for reliable IoT services |
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