Author : G.Yedukondalu 1
Date of Publication :20th December 2017
Abstract: Given a sequence of system calls, we want to predict whether that sequence of system calls is a normal or abnormal action. To do this, we chose traditional machine learning classification algorithm Feedforward Error Back Propagation Algorithm from Python Sci-Kit library and applied on classified data set. In these classified data set each feature is defined as a system call and the feature value is the frequency of that system call
Reference :
-
- Sanjay Rawat, Arun K. Pujari,V. P. Gulati, On the Use of Singular Value Decomposition for a Fast Intrusion DetectionSystem, VODCA 2004 Preliminary Version,pp.1 -13
- Solane Duquea, Dr.Mohd, Nizam bin Omar, Using Data Mining Algorithms for Developing a Model for Intrusion Detection System (IDS), Procedia Computer Science 61 ( 2015 ) 46 – 51(ELSEVIER)
- Richard Zuech*, Taghi M Khoshgoftaar and Randall Wald, Intrusion detection and Big Heterogeneous Data: a Survey, Journal of Big Data (2015)- Springer Open Journal 2:3, DOI 10.1186/s40537-015-0013-4
- Mahdi Zamani and Mahnush Movahedi, Machine Learning Techniques for Intrusion Detection {fzamani,movahedi}@cs.unm.edu, Department of Computer Science University of New Mexico, arXiv: 1312. 2177v2 [cs.CR] 9 May 2015.
- Harvinder Pal Singh Sasan and Meenakshi Sharma, Intrusion Detection Using Feature Selection and Machine Learning Algorithm with Misuse Detection, International Journal of Computer Science & Information Technology (IJCSIT) Vol 8, No 1, February 2016
- Xin Xu and Tao Xie, A Reinforcement Learning Approach for Host-Based Intrusion Detection Using Sequences of System Calls, Springer-Verlag Berlin Heidelberg 2005, pp. 995 –1003.
- Murat OÄžUZ, Ä°hsan Ömür BUCAK, A Behavior Based Intrusion Detection System Using Machine Learning Algorithms, International Journal of Artificial Intelligence and Expert Systems (IJAE), Volume (7) : Issue (2) : 2016,pp.9-24
- Sunil Kumar Gautam, Hari Om, Computational neural network regression model for Host based Intrusion Detection System, ScienceDirect Perspectives in Science(2016) 8, 93—95.