Home > Computer Science > Computer Network > Volume-1 > Issue-5 > An Interruption Discovery Structure Depend on Cluster Centres and Adjacent Neighbours

An Interruption Discovery Structure Depend on Cluster Centres and Adjacent Neighbours

Call for Papers

Volume-8 | Issue-6

Last date : 27-Dec-2024

Best International Journal
Open Access | Peer Reviewed | Best International Journal | Indexing & IF | 24*7 Support | Dedicated Qualified Team | Rapid Publication Process | International Editor, Reviewer Board | Attractive User Interface with Easy Navigation

Journal Type : Open Access

First Update : Within 7 Days after submittion

Submit Paper Online

For Author

Research Area


An Interruption Discovery Structure Depend on Cluster Centres and Adjacent Neighbours


V.Ravi Kishore | Dr.V.Venkata Krishna

https://doi.org/10.31142/ijtsrd2423



V.Ravi Kishore | Dr.V.Venkata Krishna "An Interruption Discovery Structure Depend on Cluster Centres and Adjacent Neighbours" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456-6470, Volume-1 | Issue-5, August 2017, pp.1087-1091, URL: https://www.ijtsrd.com/papers/ijtsrd2423.pdf

The aim of an interruption discovery structure (IDS) is to notice various types of hateful network transfer and computer usage, which cannot be detected by a straight firewall. Many IDS have been urban based on engine learning techniques. Specifically, advanced finding approaches created by combining or integrating multiple learning techniques have shown better finding act than general single learning techniques. The feature image way is an important model classifier that facilitates correct classifications, still, there have been very few correlated studies focusing how to extract more agent features for normal connections and effective detection of attacks. This paper proposes a novel feature representation approach, namely the cluster centre and nearest neighbour (CANN) approach. In this approach, two distances are measured and summed, the first one based on the distance between each data sample and its cluster centre, and the second distance is between the data and its nearest neighbour in the same cluster. Then, this new and one-dimensional distance based mark is used to represent each data sample for interruption detection by a k-Nearest Neighbour (k-NN) classifier. The experimental results based on the KDD-Cup 99 dataset show that the CANN classifier not only performs better than or similar to k-NN and support vector machines trained and tested by the original feature representation in terms of classification correctness, discovery rates, and false alarms. I also provides high computational competence for the time of classifier training and testing (i.e., detection).

Intrusion detection, Anomaly detection, Feature representation, Cluster center,Nearest neighbour


IJTSRD2423
Volume-1 | Issue-5, August 2017
1087-1091
IJTSRD | www.ijtsrd.com | E-ISSN 2456-6470
Copyright © 2019 by author(s) and International Journal of Trend in Scientific Research and Development Journal. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0) (http://creativecommons.org/licenses/by/4.0)

International Journal of Trend in Scientific Research and Development - IJTSRD having online ISSN 2456-6470. IJTSRD is a leading Open Access, Peer-Reviewed International Journal which provides rapid publication of your research articles and aims to promote the theory and practice along with knowledge sharing between researchers, developers, engineers, students, and practitioners working in and around the world in many areas like Sciences, Technology, Innovation, Engineering, Agriculture, Management and many more and it is recommended by all Universities, review articles and short communications in all subjects. IJTSRD running an International Journal who are proving quality publication of peer reviewed and refereed international journals from diverse fields that emphasizes new research, development and their applications. IJTSRD provides an online access to exchange your research work, technical notes & surveying results among professionals throughout the world in e-journals. IJTSRD is a fastest growing and dynamic professional organization. The aim of this organization is to provide access not only to world class research resources, but through its professionals aim to bring in a significant transformation in the real of open access journals and online publishing.

Thomson Reuters
Google Scholer
Academia.edu

ResearchBib
Scribd.com
archive

PdfSR
issuu
Slideshare

WorldJournalAlerts
Twitter
Linkedin