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Keywords: Mutual information
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Journal Articles
A novel ensemble causal feature selection approach with mutual information and group fusion strategy for multi-label data
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International Journal of Intelligent Computing and Cybernetics (2024) 17 (4): 671–704.
Published: 22 July 2024
... on mutual information and group fusion strategy (CMIFS) for multi-label data. First, the causal relationship between labels and features is analyzed by local causal structure learning, respectively, to obtain a causal feature set. Second, we eliminate false positive features from the obtained feature set...
