MM

Mykola Makhortykh

5 records found

Authored

The rise of news content on social media has been accompanied by a hope that people with lower socioeconomic status and less interest in political affairs would be “accidentally” exposed to news. By combining tracking and survey data from a Dutch online panel (N = 413), we analyz ...

We are what we click

Understanding time and content-based habits of online news readers

The article contributes both conceptually and methodologically to the study of online news consumption by introducing new approaches to measuring user information behaviour and proposing a typology of users based on their click behaviour. Using as a case study two online outle ...

Reading news with a purpose

Explaining user profiles for self-actualization

Personalized content provided by recommender systems is an integral part of the current online news reading experience. However, news recommender systems are criticized for their'black-box' approach to data collection and processing, and for their lack of explainability and tr ...

Designing for the beter by taking users into account

A qalitative evaluation of user control mechanisms in (NEWS) recommender systems

Recommender systems (RS) are on the rise in many domains. While they ofer great promises, they also raise concerns: lack of transparency, reduction of diversity, little to no user control. In this paper, we align with the normative turn in computer science which scrutinizes the e ...

SIREN

A Simulation Framework for Understanding the Effects of Recommender Systems in Online News Environments

The growing volume of digital data stimulates the adoption of recommender systems in different socioeconomic domains, including news industries. While news recommenders help consumers deal with information overload and increase their engagement, their use also raises an increasin ...