SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts

Personality distinctively characterises an individual and profoundly influences behaviours. Social media offer the virtual community an unprecedented opportunity to generate content and share aspects of their life which often reflect their personalities. The interest in using deep learning to infer...

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Main Authors: Adi Darliansyah, M. Naeem, Farhaan Mirza, Russel Pears
Format: Article
Language:English
Published: Graz University of Technology 2019-10-01
Series:Journal of Universal Computer Science
Subjects:
Online Access:https://lib.jucs.org/article/22662/download/pdf/
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spelling doaj-39ea4b96a47b4397967db67960ab1ffd2021-06-23T07:57:15ZengGraz University of TechnologyJournal of Universal Computer Science0948-69682019-10-0125101323135210.3217/jucs-025-10-132322662SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short TextsAdi Darliansyah0M. Naeem1Farhaan Mirza2Russel Pears3Auckland University of TechnologyAuckland University of TechnologyAuckland University of TechnologyAuckland University of TechnologyPersonality distinctively characterises an individual and profoundly influences behaviours. Social media offer the virtual community an unprecedented opportunity to generate content and share aspects of their life which often reflect their personalities. The interest in using deep learning to infer traits from digital footprints has grown recently; however, very limited work has been presented which explores the sentiment information conveyed. The present study, therefore, used a computational approach to classify personality from social media by gauging public perceptions underlying factors encompassing traits. In the research reported in this paper, a Sentiment-based Personality Detection system was developed to infer trait from short texts based on the 'Big Five' personality dimensions. We exploited the spirit of Neural Network Language Model (NNLM) by using a uni ed model that combines a Recurrent Neural Network named Long Short-Term Memory (LSTM) with a Convolutional Neural Network (CNN). We performed sentiment classi cation by grouping short messages harvested online into three categories, namely positive, negative, and nonpartisan. This is followed by employing Global Vectors (GloVe) to build vectorial word representations. As such, this step aims to add external knowledge to short texts. Finally, we trained each variant of the models to compute prediction scores across the ve traits. Experimental study indicated the e ectiveness of our system. As part of our investigation, a case study was carried out to investigate the existing correlation of personality traits and opinion polarities which employed the proposed system. The results support the prior ndings of the tendency of persons with the same traits to express sentiments in similar ways.https://lib.jucs.org/article/22662/download/pdf/personality detectionfive-factor modelsentimen
collection DOAJ
language English
format Article
sources DOAJ
author Adi Darliansyah
M. Naeem
Farhaan Mirza
Russel Pears
spellingShingle Adi Darliansyah
M. Naeem
Farhaan Mirza
Russel Pears
SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
Journal of Universal Computer Science
personality detection
five-factor model
sentimen
author_facet Adi Darliansyah
M. Naeem
Farhaan Mirza
Russel Pears
author_sort Adi Darliansyah
title SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
title_short SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
title_full SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
title_fullStr SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
title_full_unstemmed SENTIPEDE: A Smart System for Sentiment-based Personality Detection from Short Texts
title_sort sentipede: a smart system for sentiment-based personality detection from short texts
publisher Graz University of Technology
series Journal of Universal Computer Science
issn 0948-6968
publishDate 2019-10-01
description Personality distinctively characterises an individual and profoundly influences behaviours. Social media offer the virtual community an unprecedented opportunity to generate content and share aspects of their life which often reflect their personalities. The interest in using deep learning to infer traits from digital footprints has grown recently; however, very limited work has been presented which explores the sentiment information conveyed. The present study, therefore, used a computational approach to classify personality from social media by gauging public perceptions underlying factors encompassing traits. In the research reported in this paper, a Sentiment-based Personality Detection system was developed to infer trait from short texts based on the 'Big Five' personality dimensions. We exploited the spirit of Neural Network Language Model (NNLM) by using a uni ed model that combines a Recurrent Neural Network named Long Short-Term Memory (LSTM) with a Convolutional Neural Network (CNN). We performed sentiment classi cation by grouping short messages harvested online into three categories, namely positive, negative, and nonpartisan. This is followed by employing Global Vectors (GloVe) to build vectorial word representations. As such, this step aims to add external knowledge to short texts. Finally, we trained each variant of the models to compute prediction scores across the ve traits. Experimental study indicated the e ectiveness of our system. As part of our investigation, a case study was carried out to investigate the existing correlation of personality traits and opinion polarities which employed the proposed system. The results support the prior ndings of the tendency of persons with the same traits to express sentiments in similar ways.
topic personality detection
five-factor model
sentimen
url https://lib.jucs.org/article/22662/download/pdf/
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