An Introduction to Cluster Analysis. Feature Selection for Clustering: A Review. Probabilistic Models for Clustering. A Survey of Partitional and Hierarchical Clustering Algorithms. Density-Based Clustering. Grid-Based Clustering. Non-Negative Matrix Factorizations for Clustering: A Survey. Spectral Clustering. Clustering High-Dimensional Data. A Survey of Stream Clustering Algorithms. Big Data Clustering. Clustering Categorical Data. Document Clustering: The Next Frontier. Clustering Multimedia Data. Time Series Data Clustering. Clustering Biological Data. Network Clustering. A Survey of Uncertain Data Clustering Algorithms. Concepts of Visual and Interactive Clustering. Semi-Supervised Clustering. Alternative Clustering Analysis: A Review. Cluster Ensembles: Theory and Applications. Clustering Validation Measures. Educational and Software Resources for Data Clustering. Index.
Charu C. Aggarwal is a Research Scientist at
the IBM T. J. Watson Research Center in Yorktown Heights, New York.
He completed his B.S. from IIT Kanpur in 1993 and his Ph.D. from
Massachusetts Institute of Technology in 1996. His research
interest during his Ph.D. years was in combinatorial optimization
(network flow algorithms), and his thesis advisor was Professor
James B. Orlin. He has since worked in the field of performance
analysis, databases, and data mining. He has published over 200
papers in refereed conferences and journals, and has applied for or
been granted over 80 patents. He is author or editor of nine books,
including this one. Because of the commercial value of the
above-mentioned patents, he has received several invention
achievement awards and has thrice been designated a Master Inventor
at IBM. He is a recipient of an IBM Corporate Award (2003) for his
work on bio-terrorist threat detection in data streams, a recipient
of the IBM Outstanding Innovation Award (2008) for his scientific
contributions to privacy technology, and a recipient of an IBM
Research Division Award (2008) for his scientific contributions to
data stream research. He has served on the program committees of
most major database/data mining conferences, and served as program
vice-chairs of the SIAM Conference on Data Mining, 2007, the IEEE
ICDM Conference, 2007, the WWW Conference 2009, and the IEEE ICDM
Conference, 2009. He served as an associate editor of the IEEE
Transactions on Knowledge and Data Engineering Journal from 2004 to
2008. He is an associate editor of the ACM TKDD Journal, an action
editor of the Data Mining and Knowledge Discovery Journal, an
associate editor of the ACM SIGKDD Explorations, and an associate
editor of the Knowledge and Information Systems Journal. He is a
fellow of the IEEE for "contributions to knowledge discovery and
data mining techniques", and a life-member of the ACM.
Chandan K. Reddy is an Assistant Professor in the Department
of Computer Science at Wayne State University. He received his PhD
from Cornell University and MS from Michigan State University. His
primary research interests are in the areas of data mining and
machine learning with applications to healthcare, bioinformatics,
and social network analysis. His research is funded by the National
Science Foundation, Department of Transportation, and the Susan G.
Komen for the Cure Foundation. He has published over 40
peer-reviewed articles in leading conferences and journals. He
received the Best Application Paper Award at the ACM SIGKDD
conference in 2010 and was a finalist of the INFORMS Franz Edelman
Award Competition in 2011. He is a member of IEEE, ACM, and
SIAM.
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