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Grouping multidimensional data: recent advances in clustering

Clustering is one of the most fundamental and essential data analysis techniques. Clustering can be used as an independent data mining task to discern intrinsic characteristics of data, or as a preprocessing step with the clustering results then used for classification, correlation analysis, or anom...

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Detalles Bibliográficos
Autores principales: Kogan, Jacob, Nicholas, Charles, Teboulle, Marc
Lenguaje:eng
Publicado: Springer 2005
Materias:
Acceso en línea:http://cds.cern.ch/record/2635171
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author Kogan, Jacob
Nicholas, Charles
Teboulle, Marc
author_facet Kogan, Jacob
Nicholas, Charles
Teboulle, Marc
author_sort Kogan, Jacob
collection CERN
description Clustering is one of the most fundamental and essential data analysis techniques. Clustering can be used as an independent data mining task to discern intrinsic characteristics of data, or as a preprocessing step with the clustering results then used for classification, correlation analysis, or anomaly detection. Kogan and his co-editors have put together recent advances in clustering large and high-dimension data. Their volume addresses new topics and methods which are central to modern data analysis, with particular emphasis on linear algebra tools, opimization methods and statistical techniques. The contributions, written by leading researchers from both academia and industry, cover theoretical basics as well as application and evaluation of algorithms, and thus provide an excellent state-of-the-art overview. The level of detail, the breadth of coverage, and the comprehensive bibliography make this book a perfect fit for researchers and graduate students in data mining and in many other important related application areas.
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spelling cern-26351712021-04-21T18:43:57Zhttp://cds.cern.ch/record/2635171engKogan, JacobNicholas, CharlesTeboulle, MarcGrouping multidimensional data: recent advances in clusteringMathematical Physics and MathematicsClustering is one of the most fundamental and essential data analysis techniques. Clustering can be used as an independent data mining task to discern intrinsic characteristics of data, or as a preprocessing step with the clustering results then used for classification, correlation analysis, or anomaly detection. Kogan and his co-editors have put together recent advances in clustering large and high-dimension data. Their volume addresses new topics and methods which are central to modern data analysis, with particular emphasis on linear algebra tools, opimization methods and statistical techniques. The contributions, written by leading researchers from both academia and industry, cover theoretical basics as well as application and evaluation of algorithms, and thus provide an excellent state-of-the-art overview. The level of detail, the breadth of coverage, and the comprehensive bibliography make this book a perfect fit for researchers and graduate students in data mining and in many other important related application areas.Springeroai:cds.cern.ch:26351712005
spellingShingle Mathematical Physics and Mathematics
Kogan, Jacob
Nicholas, Charles
Teboulle, Marc
Grouping multidimensional data: recent advances in clustering
title Grouping multidimensional data: recent advances in clustering
title_full Grouping multidimensional data: recent advances in clustering
title_fullStr Grouping multidimensional data: recent advances in clustering
title_full_unstemmed Grouping multidimensional data: recent advances in clustering
title_short Grouping multidimensional data: recent advances in clustering
title_sort grouping multidimensional data: recent advances in clustering
topic Mathematical Physics and Mathematics
url http://cds.cern.ch/record/2635171
work_keys_str_mv AT koganjacob groupingmultidimensionaldatarecentadvancesinclustering
AT nicholascharles groupingmultidimensionaldatarecentadvancesinclustering
AT teboullemarc groupingmultidimensionaldatarecentadvancesinclustering