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Jin et al., 2021 - Google Patents

A weighting method for feature dimension by semisupervised learning with entropy

Jin et al., 2021

View PDF
Document ID
15186060624629975694
Author
Jin D
Yang M
Qin Z
Peng J
Ying S
Publication year
Publication venue
IEEE Transactions on Neural Networks and Learning Systems

External Links

Snippet

In this article, a semisupervised weighting method for feature dimension based on entropy is proposed for classification, dimension reduction, and correlation analysis. For real-world data, different feature dimensions usually show different importance. Generally, data in the …
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Classifications

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