Metaheuristic Clustering

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Cluster analysis means the organization of an unlabeled collection of objects or patterns into separate groups based on their similarity. The task of computerized data clustering has been approached from diverse domains of knowledge like graph theory, multivariate analysis, neural networks, fuzzy set theory, and so on. Clustering is often described as an unsupervised learning method but most of the traditional algorithms require a prior specification of the number of clusters in the data for guiding the partitioning process, thus making it not completely unsupervised. Modern data mining tools that predict future trends and behaviors for allowing businesses to make proactive and knowledge-driven decisions, demand fast and fully automatic clustering of very large datasets with minimal or no user intervention.

In this volume, we formulate clustering as an optimization problem, where the best partitioning of a given dataset is achieved by minimizing/maximizing one (single-objective clustering) or more (multi-objective clustering) objective functions. Using several real world applications, we illustrate the performance of several metaheuristics, particularly the Differential Evolution algorithm when applied to both single and multi-objective clustering problems, where the number of clusters is not known beforehand and must be determined on the run. This volume comprises of 7 chapters including an introductory chapter giving the fundamental definitions and the last Chapter provides some important research challenges.

Academics, scientists as well as engineers engaged in research, development and application of optimization techniques and data mining will find the comprehensive coverage of this book invaluable.


Latest research on metaheuristic clustering

Autorentext
Dr. Ajith Abraham is Director of the Machine Intelligence Research (MIR) Labs, a global network of research laboratories with headquarters near Seattle, WA, USA. He is an author/co-author of more than 750 scientific publications. He is founding Chair of the International Conference of Computational Aspects of Social Networks (CASoN), Chair of IEEE Systems Man and Cybernetics Society Technical Committee on Soft Computing (since 2008), and a Distinguished Lecturer of the IEEE Computer Society representing Europe (since 2011).

Inhalt
Metaheuristic Pattern Clustering An Overview.- Differential Evolution Algorithm: Foundations and Perspectives.- Modeling and Analysis of the Population-Dynamics of Differential Evolution Algorithm.- Automatic Hard Clustering Using Improved Differential Evolution Algorithm.- Fuzzy Clustering in the Kernel-Induced Feature Space Using Differential Evolution Algorithm.- Clustering Using Multi-objective Differential Evolution Algorithms.- Conclusions and Future Research.

Weitere Informationen

  • Allgemeine Informationen
    • GTIN 09783540921721
    • Sprache Englisch
    • Größe H20mm x B239mm x T157mm
    • Jahr 2009
    • EAN 9783540921721
    • Format Fester Einband
    • ISBN 978-3-540-92172-1
    • Titel Metaheuristic Clustering
    • Autor Swagatam Das , Ajith Abraham , Amit Konar
    • Untertitel Studies in Computational Intelligence 178
    • Gewicht 558g
    • Herausgeber Springer-Verlag GmbH
    • Anzahl Seiten 252
    • Lesemotiv Verstehen
    • Genre Informatik

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