- Tamta Hager Ph.D.1; Nata Khorava Ph.D.2
- DOI: 10.5281/zenodo.21353102
- GAS Journal of Arts Humanities and Social Sciences (GASJAHSS)
Social media platforms have fundamentally
transformed the contemporary information environment by replacing traditional
editorial gatekeeping with algorithmically driven content personalization.
Rather than presenting identical information to all users, digital platforms
selectively prioritize content according to individual behavioural patterns,
interests, and previous online interactions. While previous studies have
extensively examined algorithmic filtering, echo chambers, and filter bubbles,
comparatively limited attention has been devoted to understanding how
algorithmic personalization interacts with cognitive biases to influence users’
perception and interpretation of information. This study addresses this
research gap by investigating the relationship between algorithmic
personalization, information exposure, and perception formation within social
media environments.
A convergent mixed-methods research design was
employed, integrating quantitative and qualitative approaches. The quantitative
phase consisted of an online survey administered to 100 social media users aged
18-65 years, while the qualitative phase involved semi-structured interviews
with eight professionals working in social media management, marketing, and
political communication. Quantitative data were analysed using descriptive
statistical methods, whereas qualitative data were analysed through thematic
analysis following Braun and Clarke’s (2006) framework.
The findings demonstrate that social media
constitutes the primary source of information for the majority of respondents
and that algorithmic personalization substantially influences users’ perceived
relevance of information, selective exposure, and trust in digital content.
Although respondents generally expressed high levels of confidence in
algorithmic recommendation systems, they simultaneously supported greater
transparency and stronger user control over algorithmic decision-making.
Interview findings further revealed that professionals perceive algorithms as
mechanisms that reinforce confirmation bias, increase emotional engagement,
fragment public discourse, and contribute to the construction of individualized
information environments.
The study argues that algorithmic influence should not be interpreted as a deterministic process through which technology directly controls human thinking. Rather, algorithmic personalization functions as a cognitive amplification mechanism that systematically reinforces existing behavioural tendencies and cognitive biases by continuously optimizing personalized information exposure. By integrating perspectives from communication studies, cognitive psychology, and digital media research, this article contributes to a more comprehensive understanding of the mechanisms through which algorithmic systems shape perception within contemporary digital societies.
