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   <subfield code="a">Cluster Analysis: An Overview -- Christian M. Hennig and Marina Meila -- A Brief History of Cluster Analysis -- Fionn Murtagh -- Optimization Methods -- Quadratic Error and k-Means -- Boris Mirkin -- K-Medoids and Other Criteria for Crisp Clustering -- Douglas Steinley -- Foundations for Center-Based Clustering: Worst-Case Approximations and Modern Developments -- Pranjal Awasthi and Maria Florina Balcan -- Dissimilarity-Based Methods -- Hierarchical Clustering -- Pedro Contreras and Fionn Murtagh -- Spectral Clustering -- Marina Meila -- Methods Based on Probability Models -- Mixture Models for Standard -- p-Dimensional Euclidean Data -- Geoffrey J. McLachlan and Suren I. Rathnayake -- Latent Class Models for Categorical Data -- G. Celeux and Gérard Govaert -- Dirichlet Process Mixtures and Nonparametric Bayesian Approaches to Clustering -- Vinayak Rao -- Finite Mixtures of Structured Models -- Marco Alfó and Sara Viviani -- Time-Series Clustering -- Jorge Caiado, Elizabeth Ann Maharaj, and Pierpaolo D’Urso -- Clustering Functional Data -- David B. Hitchcock and Mark C. Greenwood -- Methods Based on Spatial Processes -- Lisa Handl, Christian Hirsch, and Volker Schmidt -- Significance Testing in Clustering -- Hanwen Huang, Yufeng Liu, David Neil Hayes, Andrew Nobel, J.S. Marron, and Christian M. Hennig -- Model-Based Clustering for Network Data -- Thomas Brendan Murphy -- Methods Based on Density Modes and Level Sets -- A Formulation in Modal Clustering Based on Upper Level Sets -- Adelchi Azzalini -- Clustering Methods Based on Kernel Density Estimators: Mean-Shift Algorithms -- Miguel Á. Carreira-Perpiñán -- Nature-Inspired Clustering -- Julia Handl and Joshua Knowles -- Specific Cluster and Data Formats -- Semi-Supervised Clustering -- Anil Jain, Rong Jin, and Radha Chitta -- Clustering of Symbolic Data -- Paula Brito -- A Survey of Consensus Clustering -- Joydeep Ghosh and Ayan Acharya -- Two-Mode Partitioning and Multipartitioning -- Maurizio Vichi -</subfield>
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