Title :
Twitter Sentiment Analysis for Security-Related Information Gathering
Author :
Jurek, Anna ; Yaxin Bi ; Mulvenna, Maurice
Author_Institution :
RepKnight Ltd., Belfast, UK
Abstract :
Analysing public sentiment about future events, such as demonstration or parades, may provide valuable information while estimating the level of disruption and disorder during these events. Social media, such as Twitter or Facebook, provides views and opinions of users related to any public topics. Consequently, sentiment analysis of social media content may be of interest to different public sector organisations, especially in the security and law enforcement sector. In this paper we present a lexicon-based approach to sentiment analysis of Twitter content. The algorithm performs normalisation of the sentiment in an effort to provide intensity of the sentiment rather than positive/negative label. Following this, we evaluate an evidence-based combining function that supports the classification process in cases when positive and negative words co-occur in a tweet. Finally, we illustrate a case study examining the relation between sentiment of twitter posts related to English Defence League and the level of disorder during the EDL related events.
Keywords :
data mining; pattern classification; security of data; social networking (online); EDL related events; English defence league; Facebook; Twitter content sentiment analysis; classification process; enforcement sector; evidence-based combining function; lexicon-based approach; positive-negative label; public sector organisations; public sentiment analysis; public topics; security-related information gathering; social media; Algorithm design and analysis; Classification algorithms; Equations; Mathematical model; Media; Sentiment analysis; Twitter; security informatics; sentiment analysis; social media;
Conference_Titel :
Intelligence and Security Informatics Conference (JISIC), 2014 IEEE Joint
Conference_Location :
The Hague
Print_ISBN :
978-1-4799-6363-8
DOI :
10.1109/JISIC.2014.17