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Dentre as diversas alternativas para a continuidade da pesquisa desenvolvida nesta Tese, destacam-se as seguintes frentes de trabalho:

• realizar novos estudos explorando outrosDatasetsna perspectiva de estender o classificador da abordagem híbrida FuzzyNetClass. Esta ampliação irá conside- rar a classificação de outros tipos significativos de tráfego nas redes de compu- tadores, em especial os diferentes tipos de vídeos;

• estender a modelagem da abordagem híbrida FuzzyNetClass considerando o emprego de Ordens Admissíveis, não somente quando da análise da entropia, mas também no reticulado, onde dados e operadores serão definidos de forma compatível com a ordem total considerada;

• adicionar a FuzzyNetClass uma etapa dinâmica para geração de regras, explo- rando uma sinergia entre frameworks para processamento fuzzy e técnicas de aprendizado de máquina por reforço;

• desenvolver novos estudos de caso, ampliando o escopo de aplicação da abor- dagem FuzzyNetClass, bem como avaliando as potenciais contribuições das no- vas frentes de trabalho indicadas para continuidade dos esforços de pesquisa.

As possibilidades indicadas nesta seção para avanços da pesquisa, foram elenca- das tendo como um dos critérios centrais o emprego da abordagem FuzzyNetClass como uma ferramenta efetiva por parte de equipes que atuam no gerenciamento do tráfego de redes.

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