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Wasikowski et al., 2009 - Google Patents

Combating the small sample class imbalance problem using feature selection

Wasikowski et al., 2009

Document ID
11031902847077397456
Author
Wasikowski M
Chen X
Publication year
Publication venue
IEEE Transactions on knowledge and data engineering

External Links

Snippet

The class imbalance problem is encountered in real-world applications of machine learning and results in a classifier's suboptimal performance. Researchers have rigorously studied the resampling, algorithms, and feature selection approaches to this problem. No systematic …
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Classifications

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