Statistical Analysis of Network Data Statistical Analysis of Network Data
Springer Series in Statistics

Statistical Analysis of Network Data

Methods and Models

    • £77.99
    • £77.99

Publisher Description

In the past decade, the study of networks has increased dramatically. Researchers from across the sciences—including biology and bioinformatics, computer science, economics, engineering, mathematics, physics, sociology, and statistics—are more and more involved with the collection and statistical analysis of network-indexed data. As a result, statistical methods and models are being developed in this area at a furious pace, with contributions coming from a wide spectrum of disciplines.

This book provides an up-to-date treatment of the foundations common to the statistical analysis of network data across the disciplines. The material is organized according to a statistical taxonomy, although the presentation entails a conscious balance of concepts versus mathematics. In addition, the examples—including extended cases studies—are drawn widely from the literature. This book should be of substantial interest both to statisticians and to anyone else working in the area of ‘network science.’

The coverage of topics in this book is broad, but unfolds in a systematic manner, moving from descriptive (or exploratory) methods, to sampling, to modeling and inference. Specific topics include network mapping, characterization of network structure, network sampling, and the modeling, inference, and prediction of networks, network processes, and network flows. This book is the first such resource to present material on all of these core topics in one place.

Eric Kolaczyk is a professor of statistics, and Director of the Program in Statistics, in the Department of Mathematics and Statistics at Boston University, where he also is an affiliated faculty member in the Center for Biodynamics, the Program in Bioinformatics, and the Division of Systems Engineering. His publications on network-based topics include work ranging from the detection of anomalous traffic patterns in computer networks to the prediction of biological function in networks of interacting proteins to the characterization of influence of groups of actors in social networks.

GENRE
Computing & Internet
RELEASED
2009
20 April
LANGUAGE
EN
English
LENGTH
398
Pages
PUBLISHER
Springer New York
SIZE
4.3
MB
Topics at the Frontier of Statistics and Network Analysis Topics at the Frontier of Statistics and Network Analysis
2017
Handbook of Large-Scale Random Networks Handbook of Large-Scale Random Networks
2010
Algorithms and Models for the Web-Graph Algorithms and Models for the Web-Graph
2010
Algorithms and Models for the Web Graph Algorithms and Models for the Web Graph
2018
Algorithms and Models for the Web-Graph Algorithms and Models for the Web-Graph
2011
Algorithms and Models for the Web Graph Algorithms and Models for the Web Graph
2017
Statistical Analysis of Network Data with R Statistical Analysis of Network Data with R
2014
Statistical Analysis of Network Data with R Statistical Analysis of Network Data with R
2020
Topics at the Frontier of Statistics and Network Analysis Topics at the Frontier of Statistics and Network Analysis
2017
The Elements of Statistical Learning The Elements of Statistical Learning
2009
An Introduction to Sequential Monte Carlo An Introduction to Sequential Monte Carlo
2020
Regression Modeling Strategies Regression Modeling Strategies
2015
Model-based Geostatistics Model-based Geostatistics
2007
Hidden Markov Processes and Adaptive Filtering Hidden Markov Processes and Adaptive Filtering
2025
Robust Statistics Through the Monitoring Approach Robust Statistics Through the Monitoring Approach
2025