Logo do repositório
Tudo no RIUFPA
Documentos
Contato
Sobre
Ajuda
  • Português do Brasil
  • English
  • Español
  • Français
Entrar
Novo usuário? Clique aqui para cadastrar. Esqueceu sua senha?
  1. Início
  2. Pesquisar por Assunto

Navegando por Assunto "Class balancing"

Filtrar resultados informando as primeiras letras
Agora exibindo 1 - 1 de 1
  • Resultados por página
  • Opções de Ordenação
  • Carregando...
    Imagem de Miniatura
    ItemAcesso aberto (Open Access)
    Classificação de ransomware utilizando MLP, redução de dimensionalidade e balanceamento de classes
    (Universidade Federal do Pará, 2023-07-03) PEREIRA, George Tassiano Melo; SALES JÚNIOR, Cloaudomiro de Souza de; http://lattes.cnpq.br/4742268936279649
    Ransomware is a type of malware that prevents or limits user access to system and files until aransom is paid. Combating this threat is difficult due to its rapid spread and constant changes in the encryption techniques used. Machine learning algorithms such as Artificial Neural Networks have been touted as promising tools in classifying ransomware because they can learn to identify complex patterns and features in large amounts of data. This allows neural networks be trained on sample examples of malicious software, including ransomware, and then be able to classify new examples with high accuracy. Furthermore, neural networks are also capable of learning and adapting to changes in malware behavior, making them effective tools for detecting new types of ransomware. In this work, three types of ransomware classification by ANN are explored within a composite pipeline with dimensionality reduction by Kernel PCA and class balancing with the random oversampling approach. The MLP (Multi-layer Perceptron) reached an average of 98% accuracy in the binary classification and 85% accuracy in the goodware family classification, where such values surpass the previous results and thus demonstrate the effectiveness of the inclusion of the class balancing in improving the ransomware detection model.
Logo do RepositórioLogo do Repositório
Nossas Redes:

DSpace software copyright © 2002-2025 LYRASIS

  • Configurações de Cookies
  • Política de Privacidade
  • Termos de Uso
  • Entre em Contato
Brasão UFPA