04421nam 22006855 450 991029984930332120200701121400.03-319-09259-610.1007/978-3-319-09259-1(CKB)3710000000277607(EBL)1965269(OCoLC)898086759(SSID)ssj0001386262(PQKBManifestationID)11752476(PQKBTitleCode)TC0001386262(PQKBWorkID)11349690(PQKB)10401816(DE-He213)978-3-319-09259-1(MiAaPQ)EBC1965269(PPN)183087739(EXLCZ)99371000000027760720141107d2015 u| 0engur|n|---|||||txtccrPartitional Clustering Algorithms /edited by M. Emre Celebi1st ed. 2015.Cham :Springer International Publishing :Imprint: Springer,2015.1 online resource (420 p.)Description based upon print version of record.3-319-09258-8 Includes bibliographical references at the end of each chapters.Recent developments in model-based clustering with applications -- Accelerating Lloyd’s algorithm for k-means clustering -- Linear, Deterministic, and Order-Invariant Initialization Methods for the K-Means Clustering Algorithm -- Nonsmooth optimization based algorithms in cluster analysis -- Fuzzy Clustering Algorithms and Validity Indices for Distributed Data -- Density Based Clustering: Alternatives to DBSCAN -- Nonnegative matrix factorization for interactive topic modeling and document clustering -- Overview of overlapping partitional clustering methods -- On Semi-Supervised Clustering -- Consensus of Clusterings based on High-order Dissimilarities -- Hubness-Based Clustering of High-Dimensional Data -- Clustering for Monitoring Distributed Data Streams.This book summarizes the state-of-the-art in partitional clustering. Clustering, the unsupervised classification of patterns into groups, is one of the most important tasks in exploratory data analysis. Primary goals of clustering include gaining insight into, classifying, and compressing data. Clustering has a long and rich history that spans a variety of scientific disciplines including anthropology, biology, medicine, psychology, statistics, mathematics, engineering, and computer science. As a result, numerous clustering algorithms have been proposed since the early 1950s. Among these algorithms, partitional (nonhierarchical) ones have found many applications, especially in engineering and computer science. This book provides coverage of consensus clustering, constrained clustering, large scale and/or high dimensional clustering, cluster validity, cluster visualization, and applications of clustering. Examines clustering as it applies to large and/or high-dimensional data sets commonly encountered in realistic applications; Discusses algorithms specifically designed for partitional clustering; Covers center-based, competitive learning, density-based, fuzzy, graph-based, grid-based, metaheuristic, and model-based approaches.Electrical engineeringComputersSignal processingImage processingSpeech processing systemsCommunications Engineering, Networkshttps://scigraph.springernature.com/ontologies/product-market-codes/T24035Information Systems and Communication Servicehttps://scigraph.springernature.com/ontologies/product-market-codes/I18008Signal, Image and Speech Processinghttps://scigraph.springernature.com/ontologies/product-market-codes/T24051Electrical engineering.Computers.Signal processing.Image processing.Speech processing systems.Communications Engineering, Networks.Information Systems and Communication Service.Signal, Image and Speech Processing.005.7620621.382Celebi M. Emreedthttp://id.loc.gov/vocabulary/relators/edtBOOK9910299849303321Partitional Clustering Algorithms1412179UNINA