2023
DOI: 10.3390/computation11070147
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Multiobjective Optimization of Fuzzy System for Cardiovascular Risk Classification

Hanna C. Villamil,
Helbert E. Espitia,
Lilian A. Bejarano

Abstract: Since cardiovascular diseases (CVDs) pose a critical global concern, identifying associated risk factors remains a pivotal research focus. This study aims to propose and optimize a fuzzy system for cardiovascular risk (CVR) classification using a multiobjective approach, addressing computational aspects such as the configuration of the fuzzy system, the optimization process, the selection of a suitable solution from the optimal Pareto front, and the interpretability of the fuzzy logic system after the optimiza… Show more

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Cited by 1 publication
(1 citation statement)
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References 73 publications
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“…The results were achieved based on the Cleveland dataset and its extension Statlog. The work in [86] proposed a multiobjective approach with a fuzzy system for the classification of cardiovascular risk. The proposed approach involved addressing computational elements such as configuring the fuzzy system, optimizing the process, selecting an appropriate solution from the optimal Pareto front, and ensuring the interpretability of the fuzzy logic system post-optimization.…”
Section: Significance Of Feature Selection In Cardiovascular Disease ...mentioning
confidence: 99%
“…The results were achieved based on the Cleveland dataset and its extension Statlog. The work in [86] proposed a multiobjective approach with a fuzzy system for the classification of cardiovascular risk. The proposed approach involved addressing computational elements such as configuring the fuzzy system, optimizing the process, selecting an appropriate solution from the optimal Pareto front, and ensuring the interpretability of the fuzzy logic system post-optimization.…”
Section: Significance Of Feature Selection In Cardiovascular Disease ...mentioning
confidence: 99%