Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis

The purpose of this study is to evaluate the criminal behavior on the social media platforms and to classify the gathered data effectively as negative, positive, or neutral in order to identify a suspect. In this study, data was collected from two platforms, Twitter and Facebook, resulting in the cr...

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Main Authors: Saeed Al Mansoori, Afrah Almansoori, Mohammed Alshamsi, Said A. Salloum, Khaled Shaalan
Format: Article
Language:English
Published: UIKTEN 2020-11-01
Series:TEM Journal
Subjects:
Online Access:http://www.temjournal.com/content/94/TEMJournalNovember2020_1313_1319.pdf
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spelling doaj-f779b126d1a64ee6ad2b518a2a8b37e72020-12-04T18:32:32ZengUIKTENTEM Journal2217-83092217-83332020-11-01941313131910.18421/TEM94-01Suspicious Activity Detection of Twitter and Facebook using Sentimental AnalysisSaeed Al MansooriAfrah AlmansooriMohammed AlshamsiSaid A. SalloumKhaled ShaalanThe purpose of this study is to evaluate the criminal behavior on the social media platforms and to classify the gathered data effectively as negative, positive, or neutral in order to identify a suspect. In this study, data was collected from two platforms, Twitter and Facebook, resulting in the creation of two datasets. The following findings have been pointed out from this study: Initially, VADER twitter sentimental analysis showed that out of 5000 tweets 50.8% people shared a neutral opinion, 39.2% shared negative opinion and only 9.9% showed positive opinion. Secondly, on Facebook, the majority of people showed a neutral response which is 55.6%, 38.9% shared positive response and only 5.6% shared negative opinion. Thirdly, the score of sentiments and engagement in every post affects the intensities of sentiments.http://www.temjournal.com/content/94/TEMJournalNovember2020_1313_1319.pdfcriminal behaviorsocial media platformstwitterfacebookpart-of-speech taggingvalance aware dictionary
collection DOAJ
language English
format Article
sources DOAJ
author Saeed Al Mansoori
Afrah Almansoori
Mohammed Alshamsi
Said A. Salloum
Khaled Shaalan
spellingShingle Saeed Al Mansoori
Afrah Almansoori
Mohammed Alshamsi
Said A. Salloum
Khaled Shaalan
Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
TEM Journal
criminal behavior
social media platforms
twitter
facebook
part-of-speech tagging
valance aware dictionary
author_facet Saeed Al Mansoori
Afrah Almansoori
Mohammed Alshamsi
Said A. Salloum
Khaled Shaalan
author_sort Saeed Al Mansoori
title Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
title_short Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
title_full Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
title_fullStr Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
title_full_unstemmed Suspicious Activity Detection of Twitter and Facebook using Sentimental Analysis
title_sort suspicious activity detection of twitter and facebook using sentimental analysis
publisher UIKTEN
series TEM Journal
issn 2217-8309
2217-8333
publishDate 2020-11-01
description The purpose of this study is to evaluate the criminal behavior on the social media platforms and to classify the gathered data effectively as negative, positive, or neutral in order to identify a suspect. In this study, data was collected from two platforms, Twitter and Facebook, resulting in the creation of two datasets. The following findings have been pointed out from this study: Initially, VADER twitter sentimental analysis showed that out of 5000 tweets 50.8% people shared a neutral opinion, 39.2% shared negative opinion and only 9.9% showed positive opinion. Secondly, on Facebook, the majority of people showed a neutral response which is 55.6%, 38.9% shared positive response and only 5.6% shared negative opinion. Thirdly, the score of sentiments and engagement in every post affects the intensities of sentiments.
topic criminal behavior
social media platforms
twitter
facebook
part-of-speech tagging
valance aware dictionary
url http://www.temjournal.com/content/94/TEMJournalNovember2020_1313_1319.pdf
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