Monitoramento e Identificação de Páginas de Phishing

  • Heitor Damasceno UFMG
  • Vitor Freire UFSJ
  • Welton Santos UFSJ
  • Elverton Fazzion UFSJ / NIC.br
  • Osvaldo Fonseca UFMG
  • Ítalo Cunha UFMG
  • Cristine Hoepers CERT.br / NIC.br
  • Klaus Steding-Jessen CERT.br / NIC.br
  • Marcelo H. P. C. Chaves CERT.br / NIC.br
  • Dorgival Guedes UFMG
  • Wagner Meira Jr. UFMG

Resumo


Campanhas de phishing frequentemente utilizam páginas Web que imitam páginas legítimas para enganar as vítimas. Apesar dos esforços da comunidade científica em combater essa atividade, o phishing fica cada vez mais sofisticado e continua fazendo vítimas. Neste artigo apresentamos um novo arcabouço de monitoramento de páginas de phishing que combina técnicas que proveem escalabilidade e efetividade. Também estudamos os compromissos existentes na complexa tarefa de construir modelos para identificar páginas de phishing. Mostramos que bases de dados representativas e atributos do conteúdo das páginas são cruciais para construir modelos gerais. Nosso arcabouço de monitoramento e identificação de páginas de phishing foi aplicado a centenas de milhares de e-mails diários, identificando uma centena de páginas de phishing, uma redução de três ordens de magnitude, e serve também de ponto de partida para direcionar esforços futuros de combate ao phishing.

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Publicado
16/08/2021
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DAMASCENO, Heitor et al. Monitoramento e Identificação de Páginas de Phishing. In: SIMPÓSIO BRASILEIRO DE REDES DE COMPUTADORES E SISTEMAS DISTRIBUÍDOS (SBRC), 39. , 2021, Uberlândia. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2021 . p. 378-391. ISSN 2177-9384. DOI: https://doi.org/10.5753/sbrc.2021.16734.

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