Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model

With the proliferation of the internet, many social platforms continue to emerge, giving rise to a surge in user-generated content. Consequently, abundant textual information permeates the virtual realm, wielding a certain impact on public opinion orientation. One can discern the prevailing sentimen...

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Main Author: Wenbin Yang
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10215383/
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author Wenbin Yang
author_facet Wenbin Yang
author_sort Wenbin Yang
collection DOAJ
description With the proliferation of the internet, many social platforms continue to emerge, giving rise to a surge in user-generated content. Consequently, abundant textual information permeates the virtual realm, wielding a certain impact on public opinion orientation. One can discern the prevailing sentiment prevailing in society by scrutinizing the latent emotional undercurrents embedded within vast news texts. This article presents an RBTM model adept at extracting and analyzing emotional information from mass media, thus lending invaluable insights into the evolution of the intelligent news industry. The empirical findings substantiate the RBTM model’s preeminence over its counterparts, evinced by its superior training duration and predictive prowess. Notably, the RBTM model efficaciously deciphers emotional inclinations within news content during practical applications, obviating the need for extensive manual inspection while curtailing analysis time by 49% across departmental endeavors. As an outcome, this paper deliberates upon the tantalizing prospects of intelligent news analysis methods contingent upon emotional information extraction, thereby paving the way for a formidable future in media comprehension.
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spelling doaj.art-3705068393fa41199cd6171b0242f16a2023-09-04T23:02:14ZengIEEEIEEE Access2169-35362023-01-0111932689327510.1109/ACCESS.2023.330467710215383Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM ModelWenbin Yang0https://orcid.org/0009-0000-9272-525XDepartment of Photography, School of Communication, Shandong University of Arts, Jinan, ChinaWith the proliferation of the internet, many social platforms continue to emerge, giving rise to a surge in user-generated content. Consequently, abundant textual information permeates the virtual realm, wielding a certain impact on public opinion orientation. One can discern the prevailing sentiment prevailing in society by scrutinizing the latent emotional undercurrents embedded within vast news texts. This article presents an RBTM model adept at extracting and analyzing emotional information from mass media, thus lending invaluable insights into the evolution of the intelligent news industry. The empirical findings substantiate the RBTM model’s preeminence over its counterparts, evinced by its superior training duration and predictive prowess. Notably, the RBTM model efficaciously deciphers emotional inclinations within news content during practical applications, obviating the need for extensive manual inspection while curtailing analysis time by 49% across departmental endeavors. As an outcome, this paper deliberates upon the tantalizing prospects of intelligent news analysis methods contingent upon emotional information extraction, thereby paving the way for a formidable future in media comprehension.https://ieeexplore.ieee.org/document/10215383/Social platformsintelligent newsemotional analysisRoBERTaBi-LSTM
spellingShingle Wenbin Yang
Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
IEEE Access
Social platforms
intelligent news
emotional analysis
RoBERTa
Bi-LSTM
title Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
title_full Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
title_fullStr Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
title_full_unstemmed Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
title_short Evaluation of the Development Value of Emotional Data Mining in Mass Media Using the RBTM Model
title_sort evaluation of the development value of emotional data mining in mass media using the rbtm model
topic Social platforms
intelligent news
emotional analysis
RoBERTa
Bi-LSTM
url https://ieeexplore.ieee.org/document/10215383/
work_keys_str_mv AT wenbinyang evaluationofthedevelopmentvalueofemotionaldatamininginmassmediausingtherbtmmodel