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Random Manifold Sampling and Joint Sparse Regularization for Multi-label Feature Selection

About

Multi-label learning is usually used to mine the correlation between features and labels, and feature selection can retain as much information as possible through a small number of features. $\ell_{2,1}$ regularization method can get sparse coefficient matrix, but it can not solve multicollinearity problem effectively. The model proposed in this paper can obtain the most relevant few features by solving the joint constrained optimization problems of $\ell_{2,1}$ and $\ell_{F}$ regularization.In manifold regularization, we implement random walk strategy based on joint information matrix, and get a highly robust neighborhood graph.In addition, we given the algorithm for solving the model and proved its convergence.Comparative experiments on real-world data sets show that the proposed method outperforms other methods.

Haibao Li, Hongzhi Zhai• 2022

Related benchmarks

TaskDatasetResultRank
Multi-Label ClassificationCorel5k
Ranking Loss0.9955
43
Multi-label Feature SelectionReuters (test)
HL12.33
11
Multi-Label ClassificationEntertainment
Ranking Loss0.8419
11
Multi-label Feature SelectionScience
AP4.52
11
Multi-label Feature SelectionEntertainment
Macro-F124.61
11
Multi-label Feature SelectionImage
AP80.75
11
Multi-label Feature SelectionImage (test)
HL20.86
11
Multi-label Feature SelectionENRON
CV Score51.199
11
Multi-label Feature SelectionReuters
CV2.463
11
Multi-label Feature SelectionYeast
Macro-F185.84
11
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