Spectral Clustering and Biclustering (ePub)
Learning Large Graphs and Contingency Tables
(Sprache: Englisch)
Explores regular structures in graphs and contingency tables by spectral theory and statistical methods
This book bridges the gap between graph theory and statistics by giving answers to the demanding questions which arise when statisticians are...
This book bridges the gap between graph theory and statistics by giving answers to the demanding questions which arise when statisticians are...
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Explores regular structures in graphs and contingency tables by spectral theory and statistical methods
This book bridges the gap between graph theory and statistics by giving answers to the demanding questions which arise when statisticians are confronted with large weighted graphs or rectangular arrays. Classical and modern statistical methods applicable to biological, social, communication networks, or microarrays are presented together with the theoretical background and proofs.
This book is suitable for a one-semester course for graduate students in data mining, multivariate statistics, or applied graph theory; but by skipping the proofs, the algorithms can also be used by specialists who just want to retrieve information from their data when analysing communication, social, or biological networks.
Spectral Clustering and Biclustering:
* Provides a unified treatment for edge-weighted graphs and contingency tables via methods of multivariate statistical analysis (factoring, clustering, and biclustering).
* Uses spectral embedding and relaxation to estimate multiway cuts of edge-weighted graphs and bicuts of contingency tables.
* Goes beyond the expanders by describing the structure of dense graphs with a small spectral gap via the structural eigenvalues and eigen-subspaces of the normalized modularity matrix.
* Treats graphs like statistical data by combining methods of graph theory and statistics.
* Establishes a common outline structure for the contents of each algorithm, applicable to networks and microarrays, with unified notions and principles.
This book bridges the gap between graph theory and statistics by giving answers to the demanding questions which arise when statisticians are confronted with large weighted graphs or rectangular arrays. Classical and modern statistical methods applicable to biological, social, communication networks, or microarrays are presented together with the theoretical background and proofs.
This book is suitable for a one-semester course for graduate students in data mining, multivariate statistics, or applied graph theory; but by skipping the proofs, the algorithms can also be used by specialists who just want to retrieve information from their data when analysing communication, social, or biological networks.
Spectral Clustering and Biclustering:
* Provides a unified treatment for edge-weighted graphs and contingency tables via methods of multivariate statistical analysis (factoring, clustering, and biclustering).
* Uses spectral embedding and relaxation to estimate multiway cuts of edge-weighted graphs and bicuts of contingency tables.
* Goes beyond the expanders by describing the structure of dense graphs with a small spectral gap via the structural eigenvalues and eigen-subspaces of the normalized modularity matrix.
* Treats graphs like statistical data by combining methods of graph theory and statistics.
* Establishes a common outline structure for the contents of each algorithm, applicable to networks and microarrays, with unified notions and principles.
Autoren-Porträt von Marianna Bolla
She is graduated from the Eötvös University ofBudapest and holds a PhD (1984); further, a CSc degree (1993) from
the Hungarian Academy of Sciences. Currently, she is a professor of
the Institute of Mathematics, Budapest University of Technology and
Economics and adjoint professor of the Central European University
of Budapest. She also leads an undergraduate research course on
Spectral Clustering in the Budapest Semester of Mathematics.
Her fields of expertise are multivariate statistics, applied
graph theory, and data mining of social, biological, and
communication networks. She has been working in various national
and European research projects related to networks and data
analysis.
She has published research papers in the Journal of Multivariate
Analysis, Linear Algebra and Its Applications, Discrete
Mathematics, Discrete Applied Mathematics, European Journal of
Combinatorics, and the Physical Review E, among others.
She is the coauthor of the textbook in Hungarian: Bolla, M.,
Krámli, A., Theory of statistical inference, Typotex, Budapest
(first ed. 2005, second ed. 2012) and another Hungarian book on
multivariate statistical analysis. She was the managing editor of
the book Contests in Higher Mathematics (ed. G. J. Székely),
Springer, 1996.
Bibliographische Angaben
- Autor: Marianna Bolla
- 2013, 1. Auflage, 296 Seiten, Englisch
- Verlag: John Wiley & Sons
- ISBN-10: 1118650719
- ISBN-13: 9781118650714
- Erscheinungsdatum: 27.06.2013
Abhängig von Bildschirmgröße und eingestellter Schriftgröße kann die Seitenzahl auf Ihrem Lesegerät variieren.
eBook Informationen
- Dateiformat: ePub
- Größe: 2.75 MB
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Sprache:
Englisch
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