Deep Learning for Unearthing Emotions in Twitter: A Hybrid Emotional Recognition Model

Received: 02 Aug 2024, Revised: 10 Aug 2024, Accepted: 29 August 2024, Available online: 30 sep 2024, Version of Record: 30 sep 2024

Aman Raj , Vivek Kumar, Divya Chaudhary

Abstract


With the intensification of new classes of media such as Twitter, the Internet has become a primary route for individual and interpersonal messaging. Many individuals share their thoughts regarding news-related topics on Twitter, an established SNS network built on people’s relationships. It offers us with a Source of data from which we can dig people’s thoughts, which is useful for product reviews and community monitoring. A Hybrid Emotional Recognition Model (HERM) is proposed in this research. Hashtags are recognized as the tag for emotional cataloging based on gathered posts from Twitter. Meanwhile, emoji and the N-grams are dug and used to classify the gathered topic comments into four distinct sentiment groups using the distorted emotional models. Machine learning approaches are applied of categorizing the emotional information set, yielding an 92 % accuracy result. Furthermore, entities underlying emotions might be obtained using the deep learning model SENNA.
Keywords: Entity identification; Point of view evaluation; Emotions categorization; Selecting attributes



Description



   

Indexed in scopus

https://www.scopus.com/results/results.uri?sort=plf-f&src=s&sid=64a8df401228b0911dee108833adb067&sot=a&sdt=a&sl=266&s=SOURCE-ID+%2817294%29AND%28%28+PUBYEAR+%3d+2024%29+OR+%28+PUBYEAR+%3d+2023%29+OR+%28+PUBYEAR+%3d+2022%29+OR+%28+PUBYEAR+%3d+2021%29%29AND+%28%28++DOCTYPE+%28+ar+%29++OR++DOCTYPE+%28+re+%29++OR++DOCTYPE+%28+cp+%29++OR++DOCTYPE+%28+dp+%29++OR++DOCTYPE+%28+ch+%29++%29+AND+NOT+DOCTYPE+%28+undefined+%29%29+AND++NOT+PUBSTAGE+%28+aip+%29++&origin=sourceinfo&zone=CSCYpreview&txGid=7e23f9
      

Article metrics

10.31763/DSJ.v5i1.1674 Abstract views : | PDF views :

   

Cite

   

Full Text

Download

Conflict of interest


“Authors state no conflict of interest”


Funding Information


This research received no external funding or grants


Peer review:


Peer review under responsibility of Defence Science Journal


Ethics approval:


Not applicable.


Consent for publication:


Not applicable.


Acknowledgements:


None.