Publication: WANHEDA: A Machine Learning Based DDoS Detection System
Type:
Article
Date
2020-12-10
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
- In today’s world computer communication is used
almost everywhere and majority of them are connected to the
world’s largest network, the Internet. There is danger in using
internet due to numerous cyber-attacks which are designed to
attack Confidentiality, Integrity and Availability of systems
connected to the internet. One of the most prominent threats to
computer networking is Distributed Denial of Service (DDoS)
Attack. They are designed to attack availability of the systems.
Many users and ISPs are targeted and affected regularly by these
attacks. Even though new protection technologies are continuously
proposed, this immense threat continues to grow rapidly. Most of
the DDoS attacks are undetectable because they act as legitimate
traffic. This situation can be partially overcome by using Intrusion
Detection Systems (IDSs). There are advanced attacks where there
is no proper documented way to detect. In this paper authors
present a Machine Learning (ML) based DDoS detection
mechanism with improved accuracy and low false positive rates.
The proposed approach gives inductions based on signatures
previously extracted from samples of network traffic. Authors
perform the experiments using four distinct benchmark datasets,
four machine learning algorithms to address four of the most
harmful DDoS attack vectors. Authors achieved maximum
accuracy and compared the results with other applicable machine
learning algorithms.
Description
Keywords
DDoS Attacks, Machine Learning, Internet Service Providers, Intrusion Detection System (IDS)
