Ataques de Mudança de Rótulo no Contexto da Detecção de Malwares Android: Uma Análise Experimental

  • Jonas Pontes UFAM / IFAC
  • Eduardo Feitosa UFAM
  • Vanderson Rocha UFAM
  • Eduardo Souto UFAM
  • Diego Kreutz UNIPAMPA

Resumo


Neste artigo, analisamos experimentalmente sete conjuntos de dados e três modelos de ML no contexto de três ataques de inversão de rótulos, organizados em seis taxas de ruído de classificação. Os resultados indicam que os diferentes algoritmos adversários de inversão de rótulos podem degradar significativamente o desempenho dos modelos e sustentam a importância de desenvolver estratégias defensivas para aumentar a segurança e a eficácia dos modelos de ML no contexto detecção de malwares Android.

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Publicado
18/09/2023
PONTES, Jonas; FEITOSA, Eduardo; ROCHA, Vanderson; SOUTO, Eduardo; KREUTZ, Diego. Ataques de Mudança de Rótulo no Contexto da Detecção de Malwares Android: Uma Análise Experimental. In: SIMPÓSIO BRASILEIRO DE SEGURANÇA DA INFORMAÇÃO E DE SISTEMAS COMPUTACIONAIS (SBSEG), 23. , 2023, Juiz de Fora/MG. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2023 . p. 321-334. DOI: https://doi.org/10.5753/sbseg.2023.233592.

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