2023
DOI: 10.35335/emod.v17i2.22
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Optimizing dataset classification through hybrid grid partition and rough set method for fuzzy rule generation

Randrianja Velo,
Jérôme Tamatave,
Solofo Sahambala

Abstract: This research presents a novel approach for optimizing dataset classification through the integration of a hybrid grid partition and rough set method for fuzzy rule generation. The objective is to improve classification accuracy and interpretability while effectively handling uncertainty in the dataset. The proposed approach combines grid partitioning, rough set theory, and fuzzy logic to identify relevant attributes within each grid cell, generate accurate fuzzy rules, and perform classification based on fuzz… Show more

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Cited by 1 publication
(1 citation statement)
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“…Fuzzy rules are a powerful tool for modeling complex systems and making decisions. They are especially useful when the relationships between variables are not fully understood or when the data is noisy and uncertain, showing a high level of flexibility (Velo et al, 2023), reliability (Dong & Duan, 2023), and easy interpretation (Vasilakakis & Iakovidis, 2023).…”
Section: Fuzzy Logicmentioning
confidence: 99%
“…Fuzzy rules are a powerful tool for modeling complex systems and making decisions. They are especially useful when the relationships between variables are not fully understood or when the data is noisy and uncertain, showing a high level of flexibility (Velo et al, 2023), reliability (Dong & Duan, 2023), and easy interpretation (Vasilakakis & Iakovidis, 2023).…”
Section: Fuzzy Logicmentioning
confidence: 99%