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Cyber-Physical Systems Virtual Organization

Read-only archive of site from September 29, 2023.

CPS-VO

botnet infestation

biblio

Visible to the public Identifying Malicious Botnet Traffic Using Logistic Regression

Submitted by grigby1 on Fri, 04/05/2019 - 10:24am
  • regression analysis
  • Logistics
  • machine learning
  • malware
  • Metrics
  • network security
  • network traffic
  • Payloads
  • popular network monitoring framework
  • pubcrawl
  • logistic regression
  • resilience
  • Resiliency
  • security of data
  • significant economic harm
  • social harm
  • statistical learning method
  • telecommunication traffic
  • vulnerable devices
  • cyber-attacks
  • botnet
  • botnet activity
  • Botnet detection
  • botnet infestation
  • botnet malware
  • botnets
  • Compositionality
  • cyber security
  • aggregate statistics
  • feature extraction
  • Hidden Markov models
  • identifying malicious botnet traffic
  • internet
  • intrusion detection system
  • invasive software
  • learning (artificial intelligence)
  • lightweight logistic regression model

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