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Tue 4 Feb, Tue 11 Feb, ... Tue 25 Feb 2020
11:00 - 13:00

Venue: Cambridge University Library, IT Training Room

Provided by: Cambridge Digital Humanities


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Social Network Analysis with Digital Data
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Tue 4 Feb, Tue 11 Feb, ... Tue 25 Feb 2020

Description

This course will provide a hands-on introduction to the field of Social Network Analysis, giving participants the opportunity to “learn by doing” the process of network data collection and analysis. After being introduced to the basic concepts, the participants will have the opportunity to explore all stages of a social network analysis project, including research design, essential measures, data collection and data analysis. The focus will be on the retrieval of electronic archival data (e.g. websites, digital archives and social media platforms) for non-programmers and on the production of network analysis with specialised software (e.g. Gephi). At the end, the participants will be equipped with the basic tools to perform meaningful visualisations and analyses of network data.

Target audience

Early Career Researchers (PhD students and postdoctoral researchers) have priority for booking on this course.

Sessions

Number of sessions: 4

# Date Time Venue Trainers
1 Tue 4 Feb   11:00 - 13:00 11:00 - 13:00 Cambridge University Library, IT Training Room map Dr Anne Alexander,  Hugo Leal
2 Tue 11 Feb   11:00 - 13:00 11:00 - 13:00 Cambridge University Library, IT Training Room map Dr Anne Alexander,  Hugo Leal
3 Tue 18 Feb   11:00 - 13:00 11:00 - 13:00 Cambridge University Library, IT Training Room map Dr Anne Alexander,  Hugo Leal
4 Tue 25 Feb   11:00 - 13:00 11:00 - 13:00 Cambridge University Library, IT Training Room map Dr Anne Alexander,  Hugo Leal
Theme
Ethics of Big Data

Booking / availability