University of Worcester Worcester Research and Publications
 
  USER PANEL:
  ABOUT THE COLLECTION:
  CONTACT DETAILS:

Rudimentary Lexicon Based Method for Sarcasm Detection

Clews, Peter and Kuzma, Joanne (2017) Rudimentary Lexicon Based Method for Sarcasm Detection. International Journal of Academic Research and Reflection, 5 (4). pp. 24-33. ISSN 2309-0405

[thumbnail of Full-Paper-RUDIMENTARY-LEXICON-BASED-METHOD-FOR-SARCASM-DETECTIONjuly2017.pdf] Text
Full-Paper-RUDIMENTARY-LEXICON-BASED-METHOD-FOR-SARCASM-DETECTIONjuly2017.pdf - Published Version
Restricted to Repository staff only

Download (556kB)

Abstract

The purpose of this paper is to establish if rudimentary methods can be used for classifying text as being sarcastic using data taken from the social media website, Twitter. Data collection for this study was carried out using text extracted from Twitter. It applies string matching against positive sentiment and interjection lexicons to test if the presence of both can be used to classify content as being sarcastic. The result shows that the most frequently used terms are too generic to be suitable for a sarcasm specific lexicon. It further shows that Boolean matches to two lexicons are suitable for classification of text as being sarcastic. This is significant as many methods require significant time in collecting and analysing the data to be used within the classification process, as well as complex algorithms to conduct the task. By using simplistic processes, it is hoped that some of the challenges related to performance are overcome. Additionally, this study is the precursor to planned further research into sarcasm detection methods.

Item Type: Article
Additional Information:

The full-text can be accessed via the Official URL.

Uncontrolled Discrete Keywords: sentiment analysis, Twitter, sarcasm detection, positive sentiments, tweets
Subjects: T Technology > T Technology (General)
Divisions: College of Business, Psychology and Sport > Worcester Business School
Related URLs:
Copyright Info: Open Access article
Depositing User: Joanne Kuzma
Date Deposited: 26 Jul 2017 12:56
Last Modified: 17 Jun 2020 17:18
URI: https://worc-9.eprints-hosting.org/id/eprint/5757

Actions (login required)

View Item View Item
 
     
Worcester Research and Publications is powered by EPrints 3 which is developed by the School of Electronics and Computer Science at the University of Southampton. More information and software credits.