Litcius/Paper detail

3bij3 – Developing a framework for researching recommender systems and their effects

Felicia Löecherbach, Damian Trilling

2020Computational Communication Research21 citationsDOIOpen Access PDF

Abstract

Today’s online news environment is increasingly characterized by personalized news selections, relying on algorithmic solutions for extracting relevant articles and composing an individual’s news diet. Yet, the impact of such recommendation algorithms on how we consume and perceive news is still understudied. We therefore developed one of the first software solutions to conduct studies on effects of news recommender systems in a realistic setting. The web app of our framework (called 3bij3) displays real-time news articles selected by different mechanisms. 3bij3 can be used to conduct large-scale field experiments, in which participants’ use of the site can be tracked over extended periods of time. Compared to previous work, 3bij3 gives researchers control over the recommendation system under study and creates a realistic environment for the participants. It integrates web scraping, different methods to compare and classify news articles, different recommender systems, a web interface for participants, gamification elements, and a user survey to enrich the behavioural measures obtained.

Topics & Concepts

Recommender systemComputer scienceWorld Wide WebField (mathematics)Control (management)SoftwareInterface (matter)Scale (ratio)Information retrievalArtificial intelligenceMathematicsBubbleParallel computingPhysicsQuantum mechanicsMaximum bubble pressure methodPure mathematicsProgramming languageRecommender Systems and TechniquesTopic ModelingAdvanced Graph Neural Networks