User beliefs about algorithmic systems are constantly co-produced through user interaction and the complex socio-technical systems that generate recommendations. Identifying these beliefs is crucial because they influence how users interact with recommendation algorithms. With no prior work on user beliefs of algorithmic video recommendations, practitioners lack relevant knowledge to improve the user experience of such systems. To address this problem, we conducted semi-structured interviews with middle-aged YouTube video consumers to analyze their user beliefs about the video recommendation system. Our analysis revealed different factors that users believe influence their recommendations. Based on these factors, we identified four groups o...
YouTube’s ‘up next’ feature algorithmically suggests videos to watch after a video that is c...
Online media platforms are increasingly using algorithms to select and present relevant information ...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
User beliefs about algorithmic systems are constantly co-produced through user interaction and the c...
26 pagesPeople’s online content choices should be driven by their intentions, but can be greatly aff...
Recommended content is a big part of many people's everyday lives and shapes users' experience (UX) ...
Recommender systems are a widespread type of online algorithm, which suggests personalised contents ...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
The application YouTube released in 2005 is today known as the most prominent platform on the world ...
Social media have established a new way of communicating and understanding social relationships. At ...
JEL Classification System: D81- Criteria for Decision-Making under Risk and Uncertainty; M31- Market...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
While a trend of cord-cutting accelerated in the early days of the pandemic, the prevalence of media...
YouTube is a global video sharing platform, affecting millions of users daily with its algorithm. Wi...
Since recommender systems have been created and developed to automate the recommendation process, us...
YouTube’s ‘up next’ feature algorithmically suggests videos to watch after a video that is c...
Online media platforms are increasingly using algorithms to select and present relevant information ...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...
User beliefs about algorithmic systems are constantly co-produced through user interaction and the c...
26 pagesPeople’s online content choices should be driven by their intentions, but can be greatly aff...
Recommended content is a big part of many people's everyday lives and shapes users' experience (UX) ...
Recommender systems are a widespread type of online algorithm, which suggests personalised contents ...
YouTube’s “up next” feature algorithmically selects, suggests, and displays videos to watch after th...
The application YouTube released in 2005 is today known as the most prominent platform on the world ...
Social media have established a new way of communicating and understanding social relationships. At ...
JEL Classification System: D81- Criteria for Decision-Making under Risk and Uncertainty; M31- Market...
YouTube's "up next" feature algorithmically selects, suggests, and displays videos to watch after th...
While a trend of cord-cutting accelerated in the early days of the pandemic, the prevalence of media...
YouTube is a global video sharing platform, affecting millions of users daily with its algorithm. Wi...
Since recommender systems have been created and developed to automate the recommendation process, us...
YouTube’s ‘up next’ feature algorithmically suggests videos to watch after a video that is c...
Online media platforms are increasingly using algorithms to select and present relevant information ...
Radicalisation via algorithmic recommendations on social media is an ongoing concern. Our prior stud...