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2020 | OriginalPaper | Chapter

Sentiment of Armed Forces Social Media Accounts in the United Kingdom: An Initial Analysis of Twitter Content

Authors : Daniel Leightley, Marie–Louise Sharp, Victoria Williamson, Nicola T. Fear, Rachael Gribble

Published in: Social Media and the Armed Forces

Publisher: Springer International Publishing

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Abstract

Prior research on the United Kingdom (UK) public’s perception towards the British Armed Forces often found a contradicting understanding of the military as both ‘heroes’ and ‘victims’. In order to examine these contradictions further, this study examined public attitudes and perceptions of the British Armed Forces, using a sentiment analysis of Twitter content posted on or after 1 January 2014. Twitter is one of the largest social media platforms, with an estimated 126 million daily active users worldwide, and 17 million active users in the UK. A bespoke data collection platform was developed to identify and extract relevant tweets and replies. In total, 323,512 tweets and 17,234 replies were identified and analysed. We found that tweets related to or discussing the British Armed Forces were significantly more positive than negative, with public perceptions of the Armed Forces stable over time. We also observed that it was more likely for negative tweets to be posted late evening or early morning compared to other hours of the day. Furthermore, this study identified differences in how positive and negative tweets were discussed in relation to politicised hashtags concerning Government policy, political organisations, and mental health. This was an unexpected finding, and more research is required to understand the reasons as to why this is the case.

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Footnotes
1
Researchers: Dr Daniel Leightley, Dr Marie-Louise Sharp, and Dr Rachael Gribble.
 
2
Prior to 1 January 2014, Twitter processed, collated, and disseminated Twitter content in a different manner, thus making a direct comparison pre and post this date unreliable.
 
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Metadata
Title
Sentiment of Armed Forces Social Media Accounts in the United Kingdom: An Initial Analysis of Twitter Content
Authors
Daniel Leightley
Marie–Louise Sharp
Victoria Williamson
Nicola T. Fear
Rachael Gribble
Copyright Year
2020
DOI
https://doi.org/10.1007/978-3-030-47511-6_9