Citation:Sewwandi, D., Mudiyanselage, O.J., Perera, K., Sandaruwan, S., Nugaliyadde, A. and Thelijjagoda, S. 2016. Intelligent Personality Detection System Using Linguistic Features Based on Social Media Data. In proceedings of the 17th Conference on Postgraduate Research, International Postgraduate Research Conference 2016, Faculty of Graduate Studies, University of Kelaniya, Sri Lanka. p 39.
Date:2016
Abstract:
With the advancement of the technology the transition from forum and blog-based Internet
communication among users to social networking sites such as Facebook and Twitter, allow
users to create and share content related to different subjects, which expose their activities
feelings and opinions. The purpose of this research article is to provide a web application in
order to detect one's personality using linguistic feature analysis. The personality of a person is
classified according to Eysenck’s Three Factor model including Extrovert - Introvert,
Neuroticism - Emotional Stability, and Psychoticism - Tender. The proposed technique is based
on ontology based text classification, linguistic feature-vector matrix using LIWC (Linguistic
Inquiry and Word Count) features and semantic analysis using supervised machine learning
algorithm named Naïve Bayes. The extracted data provides extraordinary information about the
personality of a person under human feelings and social interaction. It conveys who the users
are and what their qualities are. This is vital for the areas such as HR management systems,
R&D Psychologists and all the other API users. Considering HR management sector this would
be an advantage in recruiting process, salary increments and providing allowances. R&D
Psychologists will gain the advantage of the dynamic ontology to make their research result in
a more efficient manner. System will be exposed as an API for universities, sports and social
clubs when recruiting individuals to those organizations. According to the test results the
proposed system is in an accuracy level of 91% when tested with a real world questionnaire
based application. Experiments have been carried out comparing with a real world personality
detection questionnaire based system and results demonstrate that the proposed technique can
detect the personality of a person with acceptable accuracy and a speed.