Title of article :
Detection and Classification of Psychopathic Personality Trait from Social Media Text Using Deep Learning Model
Author/Authors :
Asghar, Junaid Faculty of Pharmacy - Gomal University - D.I. Khan (KP), Pakistan , Akbar, Saima Gomal University - D.I. Khan (KP), Pakistan , Zubair Asghar, Muhammad Gomal University - D.I. Khan (KP), Pakistan , Ahmad, Bashir Dept. of Computer Science - Qurtaba University - D.I. Khan (KP), Pakistan , Al-Rakhami, Mabrook S Information Systems Department - College of Computer and Information Sciences - King Saud University - Riyadh, Saudi Arabia , Gumaei, Abdu Information Systems Department - College of Computer and Information Sciences - King Saud University - Riyadh, Saudi Arabia
Pages :
9
From page :
1
To page :
9
Abstract :
Nowadays, there is a digital era, where social media sites like Facebook, Google, Twitter, and YouTube are used by the majority of people, generating a lot of textual content. The user-generated textual content discloses important information about people’s personalities, identifying a special type of people known as psychopaths. The aim of this work is to classify the input text into psychopath and nonpsychopath traits. Most of the existing work on psychopath’s detection has been performed in the psychology domain using traditional approaches, like SRPIII technique with limited dataset size. Therefore, it motivates us to build an advanced computational model for psychopath’s detection in the text analytics domain. In this work, we investigate an advanced deep learning technique, namely, attention-based BILSTM for psychopath’s detection with an increased dataset size for efficient classification of the input text into psychopath vs. nonpsychopath classes.
Keywords :
Text , Personality , Psychopathic
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2021
Full Text URL :
Record number :
2615821
Link To Document :
بازگشت