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7 Conclusão e Trabalhos Futuros

7.1 Trabalhos Futuros

Como trabalhos futuros visa-se aprofundar ainda mais as pesquisas sobre as funções reti- culares de mistura generalizada e consequentemente sobre as funções OWA e DYOWA. Além disso, pretende-se:

• Propor formas generalizadas de integrais de Choquet e Sugeno usando a noção ordens admissíveis;

• Dar continuidade ao trabalho iniciado em (FARIAS; SANTIAGO; BEDREGAL, 2018b) sobre

as funções mistura generalizada intervalares;

• Pesquisar por mecanismos geradores de pesos para otimizar resultados;

• Aprimorar o método proposto na Seção 6.2, utilizando-se algoritmos de aprendizado para: – Construir funções pesos;

– Escolher as combinações dos classificadores. • Investigar outras possibilidades de aplicações, como em:

– Problemas de tomada de decisão; – Agrupamento de dados;

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