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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 by MANOJ KUMAR GANTAYAT (manoj_gantayat@yahoo.co.in) Roll # CS200117145 Under the Guidance of MR. S.K.MEHER ARTIFICIAL NEURAL NETWORK FOR MISUSE DETECTION
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 INTRODUCTION INTRUSION DETECTION SYSTEMS (IDS) Host-based IDS Network-based IDS Vulnerability-assessment IDS COMPONENT OF Of IDS An information source that provides a stream of event records An analysis engine that identifies signs of intrusions A response component that gene rates reactions based on the outcome of the analysis engine.
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 NEURAL NETWORKS
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 NEURAL NETWORK IDS PROTOTYPES 1. Percetron Model: A single neuron with adjustable synapses and threshold.
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 2. Backpropagation Model 3. Perceptron-Backpropagation Hybrid Model
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 Neural Network Intrusion Detection Systems Computer attack Typical characteristics of User Computer Viruses Malicious Software in Computer Network
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 NEGPAIM MODEL
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 NEURAL ENGINE Based Anomaly intrusion detection Establish profiles of normal user and compare user behaviors to those profiles Investigation of total behaviors of the user Disadvantages A statistical assumption is required
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 IMPLEMENTATION Uses Multi-layer Pecptron Network First Stage : 1. Training a set of historical Data 2. Only once for each user Second Stage: 1. Engine accept input Data 2. Compare with the historical Data
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 IMPLEMENTATION OF ANN 1. Incorporating into Modified or Existing Expert system The incoming Data is Filtered by Neural Network for suspicious event The False alarm should be reduced Disadvantages: Need for update to recognize the new attack
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 2. Neural Network as Stand alone System Data is received from Network Stream and analyzed for misuse Indicative of data is forwarded to automated intrusion response system
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 LEVEL OF PROCESSING OF DATA LEVEL 1: The element of data is selected from packet as Protocol ID, Source Port, Destination Port, Source Address, Destination Address, ICMP type, ICMP Code, Raw data length, Raw. LEVEEL 2: Converting the nine element data to a standardized numeric representation. LEVEL 3: Conversion of result data into ASCII coma delimited format that could be used by Neural Network.
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 ADVANTAGES OF ANN BASED MISUSE DETECTION Analyzing the Data which is incomplete of distorted Speed of neural Network A particular event was indicative attack can be known To Learn the characteristics of Misuse attack
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 DISADVANTAGES OF ANN BASED MISUSE DETECTION Need accurate training of the system Black Box nature of the neural network The weight and transfer function of various network nodes are Frozen after a network has achieved a level of success in identification of event
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 CONCLUSION The early results of tests of these technologies show significant promise, and our future work will involve the refinement of the approach and the development of a full-scale demonstration system
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004 THANK YOU
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NATIONAL INSTITUTE OF SCIENCE & TECHNOLOGY Presented by:Manoj Kumar Gantayat CS:200118258 Technical Seminar Presentation - 2004
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