Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/3586
Title: A longitudinal sentiment analysis of the #FeesMustFall campaign on Twitter
Authors: Khan, Yaseen 
Keywords: #FeesMustFall;Opinion mining;Sentimemt analysis;Natural Language Processing;Social robots;Twitter bots;Cyborgs
Issue Date: 29-Apr-2019
Abstract: 
The #FeesMustFall campaign began in 2015 to lobby government to provide students
with free university education in order to redress past imbalances. It rapidly progressed
to become a widespread national phenomenon that attracted international attention
and sympathetic support. However, certain unsavoury incidents marred the campaign
and attempted to derail it from achieving its goals. The campaign did reach many of
its targets with the South African government eventually announcing free education
for the poor and working class in December 2017. #FeesMustFall has been well
documented and researched, however, no literature offered a quantitative insight into
the opinions of social media users during this campaign, although a unique feature of
#FeesMustFall was leveraging social media platforms to coordinate the campaign.
This study addresses this gap by undertaking a longitudinal sentiment analysis of
textual conversations expressed on the Twitter social media platform.
This longitudinal study analyses the Twitter #FeesMustFall campaign through the
acquisition of 576 583 tweets posted between 15 October 2015 and 10 April 2017.
These tweets were pre-processed and cleaned by removing exact duplicates and
unintelligible data. The research method to analyse the “cleaned” #FeesMustFall data
utilises, inter alia, descriptive statistics, sentiment analysis using a natural language
programming (NLP) approach called Valence Aware Dictionary sEntiment Reasoner
(VADER) and code written in Python. VADER is a lexicon rule-based sentiment
analysis tool particularly suited to social media. To detect multiple changes in this large
historical dataset, the Change Point Analysis method (CPA) is applied using a
Cumulative Sum Analysis (CUSUM) method to identify changes across time.
The research question is whether and for what reason the online sentiment changed
during the observation period. The sentiment expressed is triangulated with perceived
real-life negative events, such as the burning of the University of KwaZulu-Natal
(UKZN) library and the University of Johannesburg (UJ) Hall, to understand whether
online activism sentiment reflected or reacted to real-life events. The study finds that
sentiment did change in relation to these two events, one on the day of the UKZN
library event and one prior to the UJ Hall event.
Social robots (bots) are automatic or semi-automatic computer programs that mimic
human behaviour in online social networks. Their deployment exposes online activism to manipulation. A further research question addressed whether bots played a role in
the #FeesMustFall campaign. A review of bots, their characteristics, behaviour, and
detection methods was undertaken. The study does indeed establish the presence of
bots during #FeesMustFall.
The study’s contribution is significant as this is the first longitudinal study of the
#FeesMustFall campaign which observes the sentiment distribution and changes. It is
also the first study to investigate and find evidence of bots in the #FeesMustFall
campaign.
Description: 
Submitted in fulfillment of the requirements for the Degree of Masters of Information and Communications
Technology, Durban University of Technology, Durban, South Africa, 2019.
URI: https://hdl.handle.net/10321/3586
DOI: https://doi.org/10.51415/10321/3586
Appears in Collections:Theses and dissertations (Accounting and Informatics)

Files in This Item:
File Description SizeFormat
KhanY_2019_Redacted.pdf3.12 MBAdobe PDFView/Open
Show full item record

Page view(s)

394
checked on Dec 22, 2024

Download(s)

621
checked on Dec 22, 2024

Google ScholarTM

Check

Altmetric

Altmetric


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.