Machine Learning Based Classification Model for Network Traffic Anomaly Detection

M, Prabhakar (2023) Machine Learning Based Classification Model for Network Traffic Anomaly Detection. Machine Learning Based Classification Model for Network Traffic Anomaly Detection, 11 (7s). ISSN 2321-8169

[thumbnail of JOURNAL Dr M PRABHAKAR  P SRILATHA  Machine Learning Based Classification Model for Network Traffic Anomaly Detection.pdf] Text
JOURNAL Dr M PRABHAKAR P SRILATHA Machine Learning Based Classification Model for Network Traffic Anomaly Detection.pdf

Download (1MB)

Abstract

In current days, cloud environments are facing a huge challenge from the attackers in terms of various attacks thrown to the cloud service providers. In both industry and academics, the problem of detection and mitigation of DDoS attacks is now a challenging issue. Detecting Distributed Denial of Service (DDos) threats is mainly a classification problem that can be addressed using data mining, machine learning and deep learning techniques. DDoS attacks can occur in any of the seven-layer OSI model's network. Hence, detecting the DDoS attacks is an important task for cloud service providers to overcome dangerous attacks and loss incurred to stake holders and also the provider..

Item Type: Article
Subjects: E Computer Science and Engineering > E1 Data Science
G Information Technology > G2 Artificial Intelligence and Machine Learning
Departments: Information Technology
Depositing User: Mr V Chowdary B
Date Deposited: 04 Mar 2024 03:54
Last Modified: 04 Mar 2024 03:54
URI: https://ir.vignanits.ac.in/id/eprint/53

Actions (login required)

View Item
View Item