Title :
Intrusion detection model using fusion of PCA and optimized SVM
Author :
Thaseen, I. Sumaiya ; Kumar, C. Aswani
Author_Institution :
Sch. of Comput. Sci. & Eng., VIT Univ., Chennai, India
Abstract :
Intrusion detection systems (IDS) play a major role in detecting the attacks that occur in the computer or networks. Anomaly intrusion detection models detect new attacks by observing the deviation from profile. However there are many problems in the traditional IDS such as high false alarm rate, low detection capability against new network attacks and insufficient analysis capacity. The use of machine learning for intrusion models automatically increases the performance with an improved experience. This paper proposes a novel method of integrating principal component analysis (PCA) and support vector machine (SVM) by optimizing the kernel parameters using automatic parameter selection technique. This technique reduces the training and testing time to identify intrusions thereby improving the accuracy. The proposed method was tested on KDD data set. The datasets were carefully divided into training and testing considering the minority attacks such as U2R and R2L to be present in the testing set to identify the occurrence of unknown attack. The results indicate that the proposed method is successful in identifying intrusions. The experimental results show that the classification accuracy of the proposed method outperforms other classification techniques using SVM as the classifier and other dimensionality reduction or feature selection techniques. Minimum resources are consumed as the classifier input requires reduced feature set and thereby minimizing training and testing overhead time.
Keywords :
data mining; feature selection; pattern classification; principal component analysis; security of data; support vector machines; IDS; KDD data set; PCA; R2L; U2R; anomaly intrusion detection model; automatic parameter selection technique; classification accuracy; classification technique; dimensionality reduction; false alarm rate; feature selection technique; insufficient analysis capacity; intrusion detection system; intrusion model; kernel parameter; low detection capability; machine learning; network attack; optimized SVM; principal component analysis; support vector machine; Accuracy; Computational modeling; Intrusion detection; Kernel; Principal component analysis; Support vector machines; Training; Cross Validation; Dimensionality Reduction; Intrusion Detection System; Principal Component Analysis; Radial Basis Function Kernel; Support Vector Machine;
Conference_Titel :
Contemporary Computing and Informatics (IC3I), 2014 International Conference on
Conference_Location :
Mysore
DOI :
10.1109/IC3I.2014.7019692