Statistics for Biological Networks
How to Infer Networks from Data
Chapman & Hall/CRC (Publisher)
1st Edition
Will be published approx. on 28. August 2026
Book
Hardback
320 pages
978-1-4398-4147-1 (ISBN)
Description
An introduction to a new paradigm in social, technological, and scientific discourse, this book presents an overview of statistical methods for describing, modeling, and inferring biological networks using genomic and other types of data. It covers a large variety of modern statistical techniques, such as sparse graphical models, state space models, Boolean networks, and hidden Markov models. The authors address gene transcription data, microRNAs, ChIP-chip, and RNAi data. Along with end-of-chapter exercises, the text includes many real-world examples with implementations using a dedicated R package.
More details
Series
Language
English
Place of publication
Boca Raton
United States
Publishing group
Taylor & Francis Inc
Target group
Professional and scholarly
Professional Practice & Development
Illustrations
120 s/w Abbildungen
120 Illustrations, black and white
Dimensions
Height: 234 mm
Width: 156 mm
ISBN-13
978-1-4398-4147-1 (9781439841471)
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Schweitzer Classification
Persons
An expert in the field of statistical bioinformatics, Ernst Wit is a professor of statistics and probability at the University of Groningen.
Veronica Vinciotti is a lecturer in statistics at Brunel University.
Vilda Purutcuoglu is an instructor in statistics at Middle East Technical University.
Veronica Vinciotti is a lecturer in statistics at Brunel University.
Vilda Purutcuoglu is an instructor in statistics at Middle East Technical University.
Author
USI Universita della Svizzera italiana, Switzerland
Brunel University, Middlesex, UK
Middle East Technical University, Ankara, Turkey
Content
Introduction. From Clusters to Networks. Visualizing Networks. Inferring Network Topology. Network Identification. Static Network Models. Dynamic Network Models. Inference with Networks.