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      A survey of techniques for internet traffic classification using machine learning

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          Visualization of an Oxygen-deficient Bottom Water Circulation in Osaka Bay, Japan

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            Wrappers for feature subset selection

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              Survey of clustering algorithms.

              Data analysis plays an indispensable role for understanding various phenomena. Cluster analysis, primitive exploration with little or no prior knowledge, consists of research developed across a wide variety of communities. The diversity, on one hand, equips us with many tools. On the other hand, the profusion of options causes confusion. We survey clustering algorithms for data sets appearing in statistics, computer science, and machine learning, and illustrate their applications in some benchmark data sets, the traveling salesman problem, and bioinformatics, a new field attracting intensive efforts. Several tightly related topics, proximity measure, and cluster validation, are also discussed.
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                Author and article information

                Journal
                IEEE Communications Surveys & Tutorials
                IEEE Commun. Surv. Tutorials
                Institute of Electrical and Electronics Engineers (IEEE)
                1553-877X
                24 2008
                24 2008
                : 10
                : 4
                : 56-76
                Article
                10.1109/SURV.2008.080406
                3a5139e6-b67a-4cd4-a80f-6fdf0a0f970f
                © 2008
                History

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