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Structure-aware Hybrid-order Similarity Learning for Multi-view Unsupervised Feature Selection

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Multi-view unsupervised feature selection (MUFS) has recently emerged as an effective dimensionality reduction method for unlabeled multi-view data. However, most existing methods mainly use first-order similarity graphs to preserve local structure, often overlooking the global structure that can be captured by second-order similarity. In addition, a few MUFS methods leverage predefined second-order similarity graphs, making them vulnerable to noise and outliers and resulting in suboptimal feature selection performance. In this paper, we propose a novel MUFS method, termed Structure-aware Hybrid-order sImilarity learNing for multi-viEw unsupervised Feature Selection (SHINE-FS), to address the aforementioned problem. SHINE-FS first learns consensus anchors and the corresponding anchor graph to capture the cross-view relationships between the anchors and the samples. Based on the acquired cross-view consensus information, it generates low-dimensional representations of the samples, which facilitate the reconstruction of multi-view data by identifying discriminative features. Subsequently, it employs the anchor-sample relationships to learn a second-order similarity graph. Furthermore, by jointly learning first-order and second-order similarity graphs, SHINE-FS constructs a hybrid-order similarity graph that captures both local and global structures, thereby revealing the intrinsic data structure to enhance feature selection. Comprehensive experimental results on real multi-view datasets show that SHINE-FS outperforms the state-of-the-art methods.

Lin Xu, Ke Li, Dongjie Wang, Fengmao Lv, Tianrui Li, Yanyong Huang• 2025

Related benchmarks

TaskDatasetResultRank
ClusteringUSPS
Accuracy0.7532
36
ClusteringYale
Accuracy57.01
32
ClusteringMSRA
Accuracy92.7
14
ClusteringPoli
Accuracy58.02
14
Clusteringmfeat
Accuracy93.11
14
ClusteringScene
Accuracy41.96
14
ClusteringSens
Accuracy62.04
14
Unsupervised Feature SelectionYale
NMI62.92
14
Unsupervised Feature SelectionMSRA
NMI86.48
14
Unsupervised Feature SelectionPoli
NMI54.71
14
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