Clustering of traffic data based on correlation analysis is an important element of several network management objectives including traffic shaping and quality of service control. Existing correlation-based clustering algorithms are affected by poor results when applied to highly variable time series characterizing most network traffic data. This paper proposes a new similarity measure for computing clusters of highly variable data on the basis of their correlation. Experimental evaluations on several synthetic and real datasets show the accuracy and robustness of the proposed solution that improves existing clustering methods based on statistical correlations
© 2008 Dr. Abdun Naser MahmoodAn important task in managing IP networks is understanding the differe...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
Clustering of traffic data based on correlation analysis is an important element of several network ...
Abstract—In this paper we investigate the dynamic traffic relationship characterized by a similarity...
There is significant interest in the data mining and network management communities about the need t...
Network traffic monitoring has long been a core element for effec- tive network management and secur...
Abstract. Clustering is to identify densely populated subgroups in data, while correlation analysis ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
AbstractTime series data are commonly used in data mining. Clustering is the most frequently used me...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
Traffic analysis is a core element in network operations and management for various purposes includi...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
The detection of correlations between different features in a set of feature vectors is a very impor...
The detection of correlations between different features in a set of feature vectors is a very impor...
© 2008 Dr. Abdun Naser MahmoodAn important task in managing IP networks is understanding the differe...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...
Clustering of traffic data based on correlation analysis is an important element of several network ...
Abstract—In this paper we investigate the dynamic traffic relationship characterized by a similarity...
There is significant interest in the data mining and network management communities about the need t...
Network traffic monitoring has long been a core element for effec- tive network management and secur...
Abstract. Clustering is to identify densely populated subgroups in data, while correlation analysis ...
Clustering is an essential branch of data mining and statistical analysis that could help us explore...
AbstractTime series data are commonly used in data mining. Clustering is the most frequently used me...
Publisher Copyright: © 2021, Crown.Correlation determination brings out relationships in data that h...
Traffic analysis is a core element in network operations and management for various purposes includi...
Correlation clustering aims at grouping the data set into correlation clusters such that the objects...
The detection of correlations between different features in a set of feature vectors is a very impor...
The detection of correlations between different features in a set of feature vectors is a very impor...
© 2008 Dr. Abdun Naser MahmoodAn important task in managing IP networks is understanding the differe...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
In this work we consider the problem of clustering time series. Contrary to other works on this topi...