Ulster University Logo

Improved lexicon-based sentiment analysis for social media analytics

Jurek, Anna, Mulvenna, Maurice and Bi, Yaxin (2015) Improved lexicon-based sentiment analysis for social media analytics. Security Informatics, 4 (9). pp. 1-13. [Journal article]

[img] Text - Published Version
3MB

URL: http://www.security-informatics.com/content/pdf/s13388-015-0024-x.pdf

DOI: 10.1186/s13388-015-0024-x

Abstract

Social media channels, such as Facebook or Twitter, allow for people to express their views and opinions about any public topics. Public sentiment related to future events, such as demonstrations or parades, indicate public atti-tude and therefore may be applied while trying to estimate the level of disruption and disorder during such events. Consequently, sentiment analysis of social media content may be of interest for di erent organisations, especially in security and law enforcement sectors. This paper presents a new lexicon-based sentiment analysis algorithm that has been designed with the main focus on real time Twitter content analysis. The algorithm consists of two key compo- nents, namely sentiment normalisation and evidence-based combination function, which have been used in order to estimate the intensity of the sentiment rather than positive/negative label and to support the mixed sentiment classi cation process. Finally, we illustrate a case study examining the relation between negative sentiment of twitter posts related to English Defence League and the level of disorder during the organisation’s related events.

Item Type:Journal article
Keywords:Sentiment analysis, Social media, Security
Faculties and Schools:Faculty of Computing & Engineering
Faculty of Computing & Engineering > School of Computing and Mathematics
Research Institutes and Groups:Computer Science Research Institute
Computer Science Research Institute > Artificial Intelligence and Applications
ID Code:32819
Deposited By: Professor Maurice Mulvenna
Deposited On:14 Dec 2015 09:44
Last Modified:17 Oct 2017 16:20

Repository Staff Only: item control page