An approach to detecting fake and misleading content on YouTube for the older generation in Bangladesh, using HCI and multilingual NLP models
Date
2024-10Publisher
Brac UniversityAuthor
Joy, Bivan ShyamAkib, Meraj Hossen
Tanna, Muhammad Abdullah
Zahin, Israt
Niloy, S.M. Zonaed Alam
Metadata
Show full item recordAbstract
The rapid advancement of digital technologies has dramatically impacted how people
access information and connect globally. However, this revolution presents specific
challenges, especially for the older generation, who are more prone to fake and misleading
content due to their lack of proper digital literacy and awareness. Easier
access to the internet and a user-friendly interface for YouTube make it a popular
choice amongst the older generation of social media users. However, YouTube’s
user-friendliness and weak content validation process make it easier for malicious
users to deceive viewers and capitalize on misinformation. In this study, we explore
the impact of such manipulation on older social media users in Bangladesh, focusing
on YouTube. By leveraging Human Computer Interactions (HCI) methodologies,
we analyze user behavior to discover how YouTube’s deceptive content influences
older users’ behaviours. Also, we identify vulnerabilities and propose strategies to
increase digital safety for this age group.
In this research, we conduct surveys and interviews to identify the types of fake and
misleading content that older users encounter and evaluate their ability to identify
and protect themselves against it. To address these challenges, we have experimented
with NLP models to create a browser extension-based system to enhance
digital safety for this age group. Our research aims to improve the YouTube Interface
to be more user-friendly while implementing robust and effective content
validation processes, ensuring everyone, especially older generations, can navigate
YouTube confidently and securely.