Applications of Extreme Value Theory to Burst Predictions
Bursts and extreme events in quantities such as connection durations, file sizes, throughput, etc. may produce undesirable consequences in computer networks. Deterioration in the quality of service is a major consequence. Predicting these extreme events and burst is important. It helps in reserving...
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my.utp.eprints.35092017-01-19T08:25:20Z Applications of Extreme Value Theory to Burst Predictions Youssouf Dahab, Abdelmahamoud Md Said, Abas Hasbullah, Halabi QA75 Electronic computers. Computer science Bursts and extreme events in quantities such as connection durations, file sizes, throughput, etc. may produce undesirable consequences in computer networks. Deterioration in the quality of service is a major consequence. Predicting these extreme events and burst is important. It helps in reserving the right resources for a better quality of service. We applied Extreme value theory (EVT) to predict bursts in network traffic. We took a deeper look into the application of EVT by using EVT based Exploratory Data Analysis. We found that traffic is naturally divided into two categories, Internal and external traffic. The internal traffic follows generalized extreme value (GEV) model with a negative shape parameter, which is also the same as Weibull distribution. The external traffic follows a GEV with positive shape parameter, which is Frechet distribution. These findings are of great value to the quality of service in data networks, especially when included in service level agreement as traffic descriptor parameters. 2009-07 Citation Index Journal PeerReviewed application/pdf http://eprints.utp.edu.my/3509/1/SPIJ-28_Paper.pdf Youssouf Dahab, Abdelmahamoud and Md Said, Abas and Hasbullah, Halabi (2009) Applications of Extreme Value Theory to Burst Predictions. [Citation Index Journal] http://eprints.utp.edu.my/3509/ |
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QA75 Electronic computers. Computer science Youssouf Dahab, Abdelmahamoud Md Said, Abas Hasbullah, Halabi Applications of Extreme Value Theory to Burst Predictions |
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Bursts and extreme events in quantities such as connection durations, file sizes, throughput, etc. may produce undesirable consequences in computer networks. Deterioration in the quality of service is a major consequence. Predicting these extreme events and burst is important. It helps in reserving the right resources for a better quality of service. We applied Extreme value theory (EVT) to predict bursts in network traffic. We took a deeper look into the application of EVT by using EVT based Exploratory Data Analysis. We found that traffic is naturally divided into two categories, Internal and external traffic. The internal traffic follows generalized extreme value (GEV) model with a negative shape parameter, which is also the same as Weibull distribution. The external traffic follows a GEV with positive shape parameter, which is Frechet distribution. These findings are of great value to the quality of service in data networks, especially when included in service level agreement as traffic descriptor parameters.
|
format |
Citation Index Journal |
author |
Youssouf Dahab, Abdelmahamoud Md Said, Abas Hasbullah, Halabi |
author_facet |
Youssouf Dahab, Abdelmahamoud Md Said, Abas Hasbullah, Halabi |
author_sort |
Youssouf Dahab, Abdelmahamoud |
title |
Applications of Extreme Value Theory to Burst Predictions |
title_short |
Applications of Extreme Value Theory to Burst Predictions |
title_full |
Applications of Extreme Value Theory to Burst Predictions |
title_fullStr |
Applications of Extreme Value Theory to Burst Predictions |
title_full_unstemmed |
Applications of Extreme Value Theory to Burst Predictions |
title_sort |
applications of extreme value theory to burst predictions |
publishDate |
2009 |
url |
http://eprints.utp.edu.my/3509/1/SPIJ-28_Paper.pdf http://eprints.utp.edu.my/3509/ |
_version_ |
1738655270177865728 |
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13.250246 |