Diversity in personalized news recommender systems is often defined as dissimilarity, and operationalized based on topic diversity (e.g., corona versus farmers strike). Diversity in news media, however, is understood as multiperspectivity (e.g., different opinions on corona measures), and arguably a key responsibility of the press in a democratic society. While viewpoint diversity is often considered synonymous with source diversity in communication science domain, in this paper, we take a computational view. We operationalize the notion of framing, adopted from communication science. We apply this notion to a re-ranking of topic-relevant recommended lists, to form the basis of a novel viewpoint diversification method. Our offline evaluatio...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
Recommender systems find relevant content for us online, including the personalized news we increasi...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Previous research on diversity in recommender systems define diversity as the opposite of similarity...
Previous research on diversity in recommender systems define diversity as the opposite of similarity...
In the debate about filter bubbles caused by algorithmic news recommendation, the conceptualization ...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
Recommender systems for news articles on social media select and filter content through automatic pe...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
Recommender systems find relevant content for us online, including the personalized news we increasi...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Previous research on diversity in recommender systems define diversity as the opposite of similarity...
Previous research on diversity in recommender systems define diversity as the opposite of similarity...
In the debate about filter bubbles caused by algorithmic news recommendation, the conceptualization ...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
Recommender systems for news articles on social media select and filter content through automatic pe...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
Recommender systems find relevant content for us online, including the personalized news we increasi...