Publication detail
Traffic Similarity Observation Using a Genetic Algorithm and Clustering
OUJEZSKÝ, V. HORVÁTH, T.
Original Title
Traffic Similarity Observation Using a Genetic Algorithm and Clustering
Type
journal article in Web of Science
Language
English
Original Abstract
This article presents a technique of traffic similarity observation based on the statistical method of survival analysis by using a genetic algorithm. The basis comes from the k-means clustering algorithm. The observed traffic is collected from different network sources by using a NetFlow collector. The purpose of this technique is to propose a process of finding spread malicious traffic, e.g., ransomware, and considers the possibility of implementing a genetic-based algorithm. In our solution, a chromosome is created from clustering k-means centers, and the Davies–Bouldin validity index is used as the second fitness value in the solution.
Keywords
Clustering algorithms, Evolutionary computation, IP networks, Information security, Programming.
Authors
OUJEZSKÝ, V.; HORVÁTH, T.
Released
11. 11. 2018
Publisher
MDPI
Location
Switzerland
ISBN
2227-7080
Periodical
Technologies - MDPI
Year of study
6
Number
4
State
Swiss Confederation
Pages from
1
Pages to
10
Pages count
10
URL
Full text in the Digital Library
BibTex
@article{BUT138952,
author="Václav {Oujezský} and Tomáš {Horváth}",
title="Traffic Similarity Observation Using a Genetic Algorithm and Clustering
",
journal="Technologies - MDPI",
year="2018",
volume="6",
number="4",
pages="1--10",
doi="10.3390/technologies6040103",
issn="2227-7080",
url="https://www.mdpi.com/2227-7080/6/4/103"
}