2021
DOI: 10.1049/cje.2021.05.003
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Semi‐supervised Robust Feature Selection with ℓq‐Norm Graph for Multiclass Classification

Abstract: Flexible manifold embedding (FME) is a semi-supervised dimension reduction framework. It has been extended into feature selection by using different loss functions and sparse regularization methods. However, these kind of methods used the quadratic form of graph embedding, thus the results are sensitive to noise and outliers. In this paper, we propose a general semisupervised feature selection model that optimizes an ℓqnorm of FME to decrease the noise sensitivity. Compare to the fixed parameter model, the ℓq-… Show more

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