In this position paper, we present a research agenda and ideas for facilitating exposure to diverse viewpoints in news recommendation. Recommending news from diverse viewpoints is important to prevent potential filter bubble effects in news consumption, and stimulate a healthy democratic debate.To account for the complexity that is inherent to humans as citizens in a democracy, we anticipate (among others) individual-level differences in acceptance of diversity. We connect this idea to techniques in Natural Language Processing, where distributional language models would allow us to place different users and news articles in a multidimensional space based on semantic content, where diversity is operationalized as distance and variance. In th...
News recommenders help users to find relevant online content and have the potential to fulfill a cru...
Recommender systems for news articles on social media select and filter content through automatic pe...
Recommender systems find relevant content for us online, including the personalized news we increasi...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
Natural Language Processing (NLP) is defined by specific, separate tasks, with each their own litera...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
International audienceOnline news consumption plays an important role in shaping the political opini...
News recommender systems provide a technological architecture that helps shaping public discourse. F...
Concerns about selective exposure and filter bubbles in the digital news environment trigger questio...
International audienceModern societies face many challenges, one of them is the rise of affective po...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
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 ...
News recommenders help users to find relevant online content and have the potential to fulfill a cru...
Recommender systems for news articles on social media select and filter content through automatic pe...
Recommender systems find relevant content for us online, including the personalized news we increasi...
In this position paper, we present a research agenda and ideas for facilitating exposure to diverse ...
Natural Language Processing (NLP) is defined by specific, separate tasks, with each their own litera...
Diversity in personalized news recommender systems is often defined as dissimilarity, and operationa...
Growing concern about the democratic impact of automatically curated news platforms urges us to reco...
International audienceOnline news consumption plays an important role in shaping the political opini...
News recommender systems provide a technological architecture that helps shaping public discourse. F...
Concerns about selective exposure and filter bubbles in the digital news environment trigger questio...
International audienceModern societies face many challenges, one of them is the rise of affective po...
As news selection is increasingly controlled by algorithms, a growing number of scholars are explori...
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 ...
News recommenders help users to find relevant online content and have the potential to fulfill a cru...
Recommender systems for news articles on social media select and filter content through automatic pe...
Recommender systems find relevant content for us online, including the personalized news we increasi...