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Incomplete Multi-view Clustering with Sample-level Auto-weighted Graph Fusion

Naiyao Liang, Zuyuan Yang, Shengli Xie

2022IEEE Transactions on Knowledge and Data Engineering45 citationsDOI

Abstract

Incomplete multi-view clustering (IMC) has received considerable attention due to its flexibility in fusing the multi-view information when the view samples are partly missing. However, existing methods seldom consider the affection of the missing samples to the contributions of the views. In this paper, we propose a novel graph fusion based IMC model (SAGF_IMC) to handle this problem. Instead of directly weighting the whole view, SAGF_IMC learns the sample-level auto weight, which allows considering both the contributions of different views and the affection of the missing samples. An effective iterative algorithm is developed, together with its convergence analysis. Experiments are provided to demonstrate that SAGF_IMC is superior to the related state-of-the-art methods by using several real-world datasets.

Topics & Concepts

WeightingComputer scienceCluster analysisGraphMissing dataData miningArtificial intelligenceSensor fusionFlexibility (engineering)Convergence (economics)Sample (material)Pattern recognition (psychology)Machine learningTheoretical computer scienceMathematicsStatisticsMedicineEconomic growthChromatographyRadiologyEconomicsChemistryVideo Surveillance and Tracking MethodsFace and Expression RecognitionRemote-Sensing Image Classification
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