An autoML network traffic analyzer for cyber threat detection

被引:0
|
作者
Alexandros Papanikolaou
Aggelos Alevizopoulos
Christos Ilioudis
Konstantinos Demertzis
Konstantinos Rantos
机构
[1] Innovative Secure Technologies P.C.,Department of Information and Electronic Engineering
[2] International Hellenic University,Department of Computer Science
[3] International Hellenic University,undefined
关键词
Cyber threat intelligent; Cyber threat information; Information sharing; Industrial environment; Cybersecurity;
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中图分类号
学科分类号
摘要
Timely detection and effective treatment of cyber-attacks for protecting personal and sensitive data from unauthorized disclosure constitute a core demand of citizens and a legal obligation of organizations that collect and process personal data. SMEs and organizations understand their obligation to comply with GDPR and protect the personal data they have in their possession. They invest in advanced and intelligent solutions to increase their cybersecurity posture. This article introduces a ground-breaking Network Traffic Analyzer, a crucial component of the Cyber-pi project's cyber threat intelligent information sharing architecture (CTI2SA). The suggested system, built on the Lambda (λ) architecture, enhances active cybersecurity approaches for traffic analysis by combining batch and stream processing to handle massive amounts of data. The Network Traffic Analyzer's core module has an automatic model selection mechanism that selects the ML model with the highest performance among its rivals. The goal is to keep the architecture's overall threat identification capabilities functioning effectively.
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页码:1511 / 1530
页数:19
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