Taxonomy of machine learning algorithms to classify realtime interactive applications
The needs of Internet applications QoS guarantee increased the demand of internet traffic classification, especially for interactive real time applications. Therefore, several classification methods were developed. Machine Learning (ML) classification is one of the most modern techniques, which sol...
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International Research Association of Computer Science, & Technology (IRACST)
2012
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Online Access: | http://eprints.utm.my/id/eprint/33568/ https://www.iracst.org/ijcnwc/papers/vol2no12012/13vol2no1.pdf |
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my.utm.335682019-01-28T03:50:23Z http://eprints.utm.my/id/eprint/33568/ Taxonomy of machine learning algorithms to classify realtime interactive applications Mohd. Nor, Sulaiman Hamza Ibrahim, Hamza Awad Mohammed, Aliyu Mohammed, Abuagla Babiker TK Electrical engineering. Electronics Nuclear engineering The needs of Internet applications QoS guarantee increased the demand of internet traffic classification, especially for interactive real time applications. Therefore, several classification methods were developed. Machine Learning (ML) classification is one of the most modern techniques, which solves the problem of traditional port base method. This paper compared experimentally the accuracy of ten ML algorithms, that when it’s used to classify interactive applications. The technique a pplied by collecting of real data from UTM. The result shows that Tree.RandomForest algorithm provided optimal results of 99.8% accuracy, compared with other algorithms. International Research Association of Computer Science, & Technology (IRACST) 2012 Article PeerReviewed Mohd. Nor, Sulaiman and Hamza Ibrahim, Hamza Awad and Mohammed, Aliyu and Mohammed, Abuagla Babiker (2012) Taxonomy of machine learning algorithms to classify realtime interactive applications. IRACST - International Journal of Computer Networks and Wireless Communications (IJCNWC), 2 (1). pp. 69-73. ISSN 2250-3501 https://www.iracst.org/ijcnwc/papers/vol2no12012/13vol2no1.pdf |
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TK Electrical engineering. Electronics Nuclear engineering Mohd. Nor, Sulaiman Hamza Ibrahim, Hamza Awad Mohammed, Aliyu Mohammed, Abuagla Babiker Taxonomy of machine learning algorithms to classify realtime interactive applications |
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The needs of Internet applications QoS guarantee increased the demand of internet traffic classification, especially for interactive real time applications. Therefore, several classification methods were developed. Machine Learning (ML) classification is one of the most modern techniques, which solves the problem of traditional port base method. This paper compared experimentally the accuracy of ten ML algorithms, that when it’s used to classify interactive applications. The technique a pplied by collecting of real data from UTM. The result shows that Tree.RandomForest algorithm provided optimal results of 99.8% accuracy, compared with other algorithms. |
format |
Article |
author |
Mohd. Nor, Sulaiman Hamza Ibrahim, Hamza Awad Mohammed, Aliyu Mohammed, Abuagla Babiker |
author_facet |
Mohd. Nor, Sulaiman Hamza Ibrahim, Hamza Awad Mohammed, Aliyu Mohammed, Abuagla Babiker |
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Mohd. Nor, Sulaiman |
title |
Taxonomy of machine learning algorithms to classify realtime interactive applications |
title_short |
Taxonomy of machine learning algorithms to classify realtime interactive applications |
title_full |
Taxonomy of machine learning algorithms to classify realtime interactive applications |
title_fullStr |
Taxonomy of machine learning algorithms to classify realtime interactive applications |
title_full_unstemmed |
Taxonomy of machine learning algorithms to classify realtime interactive applications |
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taxonomy of machine learning algorithms to classify realtime interactive applications |
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International Research Association of Computer Science, & Technology (IRACST) |
publishDate |
2012 |
url |
http://eprints.utm.my/id/eprint/33568/ https://www.iracst.org/ijcnwc/papers/vol2no12012/13vol2no1.pdf |
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