Litcius/Paper detail

Unsupervised Multi-View K-Means Clustering Algorithm

Miin‐Shen Yang, Ishtiaq Hussain

2023IEEE Access66 citationsDOIOpen Access PDF

Abstract

Since advanced technologies via social media, internet, virtual communities and networks and internet of things (IoT), there are more multi-view data to be collected. Multi-view clustering is a substantial tool as a natural design for clustering multi-view data. K-means (KM) clustering for (single-view) data had been extended for handling multi-view data, called multi-view KM (MV-KM). In the literature, most MV-KM clustering algorithms are reported to be influenced by initializations and also need a given number of clusters. In this paper, we propose an unsupervised type of MV-KM clustering algorithm so that it can automatically find an optimal number of clusters without any initialization. We call it unsupervised MV-KM (U-MV-KM). Moreover, we also propose three multi-view cluster validity indices, called multi-view Dunn index (MV-Dunn), multi-view generalized Dunn index (MV-G-Dunn) and multi-view modified Dunn (MV-M-Dunn) indices for MV-KM clustering algorithms. We make experiments on some synthetic and real data sets and also make comparisons with some existing algorithms. Based on the experimental results and comparisons, the proposed U-MV-KM clustering algorithm actually shows good results. We also apply U-MV-KM to real data sets, the results demonstrate the superiority and usefulness of the U-MV-KM algorithm for clustering multi-view data.

Topics & Concepts

Cluster analysisComputer scienceInitializationCURE data clustering algorithmData miningData stream clusteringAlgorithmCanopy clustering algorithmRand indexk-means clusteringCorrelation clusteringArtificial intelligenceProgramming languageAdvanced Clustering Algorithms ResearchFace and Expression RecognitionComplex Network Analysis Techniques