This site uses cookies

Some of these cookies are essential, while others help us to improve your experience by providing insights into how the site is being used.

For more detailed information please check our Cookie notice


Necessary cookies

Necessary cookies enable core functionality. This website cannot function properly without these cookies.


Cookies that measure website use

If you provide permission, we will use Google Analytics to measure how you use the website so we can improve it based on our understanding of user needs. Google Analytics sets cookies that store anonymised information about how you got to the site, the pages you visit, how long you spend on each page and what you click on while you’re visiting the site.

Webinar: Social Network Analysis: Getting and Marshalling Data

15 Sep 2020 2:00 pm - 3:00 pm
Online
Training
Data skills
Other
Vast swathes of our social interactions and personal behaviours are now conducted online and/or captured digitally. Thus, computational methods for collecting, cleaning and analysing data are an increasingly important component of a social scientist’s toolkit. Social Network Analysis (SNA) offers a rich and insightful methodological approach for uncovering and understanding social structures, relations and networks of association.
This free webinar, organised by the UK Data Service, is the second in a series of three on understanding and using SNA methods for social science research purposes. In this webinar we demonstrate how to collect and clean social network data. In particular, we draw on two sources of social network data:
  1. The social media platform Twitter, which allows restricted access to some of its data through an Application Programming Interface (API)
  2. Administrative data on UK charities, which is publicly available and can be repurposed for social network analysis
As a result of attending this webinar, participants will understand the steps necessary for collecting, cleaning and reshaping data for social network analysis. 
Details:
  • Level: Introductory, for individuals with no prior knowledge or experience of social network analysis
  • Duration: 45 minutes, followed by questions
  • Pre-requisites: The following webinars cover useful background knowledge and skills:
    Social Network Analysis: Basic Concepts
    APIs as a Source of Data
  • Audience: Researchers and analysts from any disciplinary background interested in employing network analysis for social science research purposes
  • Programming language: Python
  • Materials: Participants will have access to an interactive online notebook through which they can practice collecting and cleaning social network data using Python
  • Learning outcomes: Understand the main steps in collecting, cleaning and reshaping data for social network analysis and be able to use Python for working with social network data
Webinar one covers the fundamental concepts and terms underpinning SNA.
Webinar three rounds off the series by diving into the concepts behind social network methods of analysis and presenting some research examples using Python.