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4 Seleção Dinâmica de Atributos para Comitês de Classicação

7.1 Considerações Finais

7.1.1 Trabalhos Futuros

Essa Tese consistiu em um trabalho investigativo e empírico sobre o uso da seleção dinâmica de atributos em comitês de classicação. Nós analisamos o comportamento de forma empírica de três métodos, mas algumas análises e investigações ainda precisam ser feitas, seriam as seguintes:

• Utilização de medidas de avaliação de instâncias para diminuir a complexidade e o tempo de execução;

• Utilização de comitês heterogêneos;

• Utilização de outros métodos de classicação;

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