The catalogue contains study descriptions in various languages. The system searches with your search terms from study descriptions available in the language you have selected. The catalogue does not have ‘All languages’ option as due to linguistic differences this would give incomplete results. See the User Guide for more detailed information.
Social Identity Model of Protest Emergence, an Agent-Based Simulation Model, 2019-2022
Creator
Chueca Del Cerro, C, University of Glasgow
Study number / PID
856155 (UKDA)
10.5255/UKDA-SN-856155 (DOI)
Data access
Open
Series
Not available
Abstract
I developed an agent-based model (ABM) which is a social simulation method, to explain protest mobilisation through national identity polarisation and how social media and individual social networks contribute in this process. From the simulation code, written in NetLogo, I collected data from multiple simulation runs of various parameter combinations. Then, I cleaned and analysed such data using RStudio.
There are three types of data files. NetLogo files that contain the simulation code for my ABM. RStudio files that contain the code for data cleaning and data analyses I carried out on the simulation outputs. The last data type are csv excel files containing the simulation results collected for each of the parameter combinations.Secessionist movements are notorious for their abilities to mobilize people. Although these movements might use economic grievances or policy preferences to attract support, national identity remains at the core of every secessionist movement, justifying their right, as a nation, to become an independent self-governing state. As these divisions on the basis of national identity grow wider, animosity between groups grows, contributing to reducing social cohesion and escalating the political conflict. This thesis is interested in understanding the role national identity polarisation plays in the emergence of protests around independence movements. Much of the recent debate in political sciences has been regarding the role of social media's filtering algorithms in the emergence of polarisation as well as the existence or prevalence of the so-called echo chambers. There is a lack of consensus around the extent to which social media filtering algorithms and online echo chambers promote polarisation and how this in turns affects protest mobilisation. This thesis proposes a social simulation approach to the topic of protest mobilisation dynamics from a political communication perspective to understand how national identity polarisation,...
Terminology used is generally based on DDI controlled vocabularies: Time Method, Analysis Unit, Sampling Procedure and Mode of Collection, available at CESSDA Vocabulary Service.
Methodology
Data collection period
01/10/2019 - 30/11/2022
Country
Not Applicable
Time dimension
Not available
Analysis unit
Individual
Event/process
Time unit
Universe
Not available
Sampling procedure
Not available
Kind of data
Numeric
Software
Data collection mode
The data was produced by NetLogo Behaviour Space, imported into RStudio for data cleaning, preparation and analyses. An agent-based model in NetLogo produced these data.
Funding information
Grant number
2238184
Access
Publisher
UK Data Service
Publication year
2023
Terms of data access
The Data Collection is available to any user without the requirement for registration for download/access.