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Self-Weighted Clustering With Adaptive Neighbors

Feiping Nie, Danyang Wu, Rong Wang, Xuelong Li

2020IEEE Transactions on Neural Networks and Learning Systems82 citationsDOI

Abstract

Many modern clustering models can be divided into two separated steps, i.e., constructing a similarity graph (SG) upon samples and partitioning each sample into the corresponding cluster based on SG. Therefore, learning a reasonable SG has become a hot issue in the clustering field. Many previous works that focus on constructing better SG have been proposed. However, most of them follow an ideal assumption that the importance of different features is equal, which is not adapted in practical applications. To alleviate this problem, this article proposes a self-weighted clustering with adaptive neighbors (SWCAN) model that can assign weights for different features, learn an SG, and partition samples into clusters simultaneously. In experiments, we observe that the SWCAN can assign weights for different features reasonably and outperform than comparison clustering models on synthetic and practical data sets.

Topics & Concepts

Cluster analysisComputer sciencePartition (number theory)Similarity (geometry)Artificial intelligenceCorrelation clusteringData miningSingle-linkage clusteringGraphCluster (spacecraft)Spectral clusteringFocus (optics)Pattern recognition (psychology)CURE data clustering algorithmMathematicsTheoretical computer scienceImage (mathematics)CombinatoricsProgramming languageOpticsPhysicsAdvanced Clustering Algorithms ResearchAdvanced Graph Neural NetworksText and Document Classification Technologies