2024
DOI: 10.20944/preprints202403.1548.v1
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Optimizing Attribute Reduction in Multi-granularity Data through a Hybrid Supervised-Unsupervised Model

Zeyuan Fan,
Jianjun Chen,
Hongyang Cui
et al.

Abstract: Attribute reduction is a core technique in the rough set domain and an important step in data preprocessing. Researchers have proposed numerous innovative methods to enhance the capability of attribute reduction, such as the emergence of multi-granularity rough set models, which can effectively process distributed and multi-granularity data. However, these innovative methods still have many shortcomings, such as how to deal with complex constraints and how to perform multi-angle effectiveness evaluations. Base… Show more

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