Python for Graph and Network Analysis
- Length: 203 pages
- Edition: 1st ed. 2017
- Language: English
- Publisher: Springer
- Publication Date: 2017-04-18
- ISBN-10: 3319530038
- ISBN-13: 9783319530031
- Sales Rank: #2000357 (See Top 100 Books)
This research monograph provides the means to learn the theory and practice of graph and network analysis using the Python programming language. The social network analysis techniques, included, will help readers to efficiently analyze social data from Twitter, Facebook, LiveJournal, GitHub and many others at three levels of depth: ego, group, and community. They will be able to analyse militant and revolutionary networks and candidate networks during elections. For instance, they will learn how the Ebola virus spread through communities.
Practically, the book is suitable for courses on social network analysis in all disciplines that use social methodology. In the study of social networks, social network analysis makes an interesting interdisciplinary research area, where computer scientists and sociologists bring their competence to a level that will enable them to meet the challenges of this fast-developing field. Computer scientists have the knowledge to parse and process data while sociologists have the experience that is required for efficient data editing and interpretation. Social network analysis has successfully been applied in different fields such as health, cyber security, business, animal social networks, information retrieval, and communications.
Table of Contents
Chapter 1: Theoretical Concepts of Network Analysis
Chapter 2: Network Basics
Chapter 3: Graph Theory
Chapter 4: Social Networks
Chapter 5: Node-Level Analysis
Chapter 6: Group-Level Analysis
Chapter 7: Network-Level Analysis
Chapter 8: Information Diffusion in Social Networks