Avaliação de Métodos de Classificação baseados em Regras de Associação para Detecção de Malwares Android

  • Vanderson da Silva Rocha UFAM
  • Diego Kreutz UNIPAMPA
  • Jonas Pontes UFAM
  • Eduardo Feitosa UFAM

Resumo


O nosso principal objetivo e apresentar uma análise exploratória do desempenho e da viabilidade de três modelos de regras de associação existentes na literatura (CBA, CMAR, CPAR) no contexto de classificação de malwares Android. Além disso, desenvolvemos também um novo modelo de classificação baseado em regras de associação e qualidade de regras, denominado EQAR, que estende o algoritmo clássico ECLAT. Para fins de comparação dos quatro modelos, utilizamos três datasets frequentemente utilizados para o treino de modelos de detecção de malwares Android: DREBIN-215, KronoDroid Emulador e KronoDroid Dispositivo Real. Os resultados indicam que os métodos de classificação baseados em regras de associação apresentam bons resultados, entretanto, os metodos avaliados dificilmente conseguem atingir a estabilidade de métricas e os resultados numéricos alcançados por modelos de aprendizado de máquina, como RandomForest e SVM, no domínio de detecção de malwares Android.
Palavras-chave: Detecção, Associação

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Publicado
12/09/2022
ROCHA, Vanderson da Silva; KREUTZ, Diego; PONTES, Jonas; FEITOSA, Eduardo. Avaliação de Métodos de Classificação baseados em Regras de Associação para Detecção de Malwares Android. In: SIMPÓSIO BRASILEIRO DE SEGURANÇA DA INFORMAÇÃO E DE SISTEMAS COMPUTACIONAIS (SBSEG), 22. , 2022, Santa Maria. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2022 . p. 316-329. DOI: https://doi.org/10.5753/sbseg.2022.21677.

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