A Study of Statistical Approach for Detection of Outliers in Network Traffic

  • Published : 2005.11.30

Abstract

In this research we study conventional and new statistical methods to analyse and detect outliers in network traffic and we apply the nonlinear time series model to make better performance of detecting abnormal traffic rather the linear time series model to compare the performances of the two models.

Keywords

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