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Sentiment Analysis of Semantically Interoperable Social Media Platforms Using Computational Intelligence Techniques

Alqahtani, Ali; Khan, Surbhi Bhatia; Alqahtani, Jarallah; AlYami, Sultan; Alfayez, Fayez

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Authors

Ali Alqahtani

Surbhi Bhatia Khan

Jarallah Alqahtani

Sultan AlYami

Fayez Alfayez



Contributors

Jae-Hoon Kim
Editor

Kichun Lee
Editor

Abstract

Competitive intelligence in social media analytics has significantly influenced behavioral finance worldwide in recent years; it is continuously emerging with a high growth rate of unpredicted variables per week. Several surveys in this large field have proved how social media involvement has made a trackless network using machine learning techniques through web applications and Android modes using interoperability. This article proposes an improved social media sentiment analytics technique to predict the individual state of mind of social media users and the ability of users to resist profound effects. The proposed estimation function tracks the counts of the aversion and satisfaction levels of each inter- and intra-linked expression. It tracks down more than one ontologically linked activity from different social media platforms with a high average success rate of 99.71%. The accuracy of the proposed solution is 97% satisfactory, which could be effectively considered in various industrial solutions such as emo-robot building, patient analysis and activity tracking, elderly care, and so on.

Citation

Alqahtani, A., Khan, S. B., Alqahtani, J., AlYami, S., & Alfayez, F. (in press). Sentiment Analysis of Semantically Interoperable Social Media Platforms Using Computational Intelligence Techniques. Applied Sciences, 13(13), 7599. https://doi.org/10.3390/app13137599

Journal Article Type Article
Acceptance Date Jun 13, 2023
Online Publication Date Jun 27, 2023
Deposit Date Jul 10, 2023
Publicly Available Date Jul 10, 2023
Journal Applied Sciences
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 13
Issue 13
Pages 7599
DOI https://doi.org/10.3390/app13137599
Keywords machine learning, social media analytics, information system, sentiment analysis

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