Balanced Iterative Reducing and Clustering Using Hierarchies with Principal Component Analysis (PBirch) for Intrusion Detection over Big Data in Mobile Cloud Environment

Author(s):  
Kai Peng ◽  
Lixin Zheng ◽  
Xiaolong Xu ◽  
Tao Lin ◽  
Victor C. M. Leung
Author(s):  
Mohsen Moshki ◽  
Mehran Garmehi ◽  
Peyman Kabiri

In this chapter, application of Principal Component Analysis (PCA) and one of its extensions on intrusion detection is investigated. This extended version of PCA is modified to cover an important shortcoming of traditional PCA. In order to evaluate these modifications, it is mathematically proved that these modifications are beneficial and later on a known dataset such as the DARPA99 dataset is used to verify results experimentally. To verify this approach, initially the traditional PCA is used to preprocess the dataset. Later on, using a simple classifier such as KNN, the effectiveness of the multiclass classification is studied. In the reported work, instead of traditional PCA, a revised version of PCA named Weighted PCA (WPCA) will be used for feature extraction. The results from applying the aforementioned method to the DARPA99 dataset show that this approach results in better accuracy than the traditional PCA when a number of features are limited, a number of classes are large, and a population of classes is unbalanced. In some situations WPCA outperforms traditional PCA by more than 1% in accuracy.


IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 113081-113093 ◽  
Author(s):  
Jose Camacho ◽  
Roberto Theron ◽  
Jose M. Garcia-Gimenez ◽  
Gabriel Macia-Fernandez ◽  
Pedro Garcia-Teodoro

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