Content area

Abstract

Purpose

Social media platforms that disseminate scientific information to the public during the COVID-19 pandemic highlighted the importance of the topic of scientific communication. Content creators in the field, as well as researchers who study the impact of scientific information online, are interested in how people react to these information resources and how they judge them. This study aims to devise a framework for extracting large social media datasets and find specific feedback to content delivery, enabling scientific content creators to gain insights into how the public perceives scientific information.

Design/methodology/approach

To collect public reactions to scientific information, the study focused on Twitter users who are doctors, researchers, science communicators or representatives of research institutes, and processed their replies for two years from the start of the pandemic. The study aimed in developing a solution powered by topic modeling enhanced by manual validation and other machine learning techniques, such as word embeddings, that is capable of filtering massive social media datasets in search of documents related to reactions to scientific communication. The architecture developed in this paper can be replicated for finding any documents related to niche topics in social media data. As a final step of our framework, we also fine-tuned a large language model to be able to perform the classification task with even more accuracy, forgoing the need of more human validation after the first step.

Findings

We provided a framework capable of receiving a large document dataset, and, with the help of with a small degree of human validation at different stages, is able to filter out documents within the corpus that are relevant to a very underrepresented niche theme inside the database, with much higher precision than traditional state-of-the-art machine learning algorithms. Performance was improved even further by the fine-tuning of a large language model based on BERT, which would allow for the use of such model to classify even larger unseen datasets in search of reactions to scientific communication without the need for further manual validation or topic modeling.

Research limitations/implications

The challenges of scientific communication are even higher with the rampant increase of misinformation in social media, and the difficulty of competing in a saturated attention economy of the social media landscape. Our study aimed at creating a solution that could be used by scientific content creators to better locate and understand constructive feedback toward their content and how it is received, which can be hidden as a minor subject between hundreds of thousands of comments. By leveraging an ensemble of techniques ranging from heuristics to state-of-the-art machine learning algorithms, we created a framework that is able to detect texts related to very niche subjects in very large datasets, with just a small amount of examples of texts related to the subject being given as input.

Practical implications

With this tool, scientific content creators can sift through their social media following and quickly understand how to adapt their content to their current user’s needs and standards of content consumption.

Originality/value

This study aimed to find reactions to scientific communication in social media. We applied three methods with human intervention and compared their performance. This study shows for the first time, the topics of interest which were discussed in Brazil during the COVID-19 pandemic.

Details

10000008
Business indexing term
Location
Title
Optimized discovery of discourse topics in social media: science communication about COVID-19 in Brazil
Author
Bernardo Cerqueira de Lima 1 ; Renata Maria Abrantes Baracho 1 ; Mandl, Thomas 2   VIAFID ORCID Logo  ; Porto, Patricia Baracho 3 

 Federal University of Minas Gerais, Belo Horizonte, Brazil 
 University of Hildesheim, Hildesheim, Germany 
 Pontifical Catholic University of Minas Gerais, Belo Horizonte, Brazil 
Publication title
Volume
59
Issue
1
Pages
180-198
Number of pages
19
Publication year
2025
Publication date
2025
Publisher
Emerald Group Publishing Limited
Place of publication
Bingley
Country of publication
United Kingdom
ISSN
25149288
e-ISSN
25149318
Source type
Scholarly Journal
Language of publication
English
Document type
Journal Article
Publication history
 
 
Online publication date
2024-09-23
Milestone dates
2024-03-04 (Received); 2024-07-14 (Revised); 2024-08-13 (Accepted)
Publication history
 
 
   First posting date
23 Sep 2024
ProQuest document ID
3154309443
Document URL
https://www.proquest.com/scholarly-journals/optimized-discovery-discourse-topics-social-media/docview/3154309443/se-2?accountid=208611
Copyright
© Emerald Publishing Limited.
Last updated
2025-11-14
Database
ProQuest One Academic