In recent years, personalized recommender systems have been facing criticism in research due to their ability to trap users in their circle of choices, called "filter-bubble", thereby limiting their exposure to novel content. In solving the issue of filter-bubble, past research has focused on providing explanations to users about how a recommender system recommends a specific item. This thesis addresses the issue of filter bubbles by helping users understand not just why a recommendation was made, but to also convey something about the limits of this recommendation. In this thesis, we help users to better understand their consumption profiles by exposing them to their unexplored regions, thereby indirectly nudging them to diverse exploratio...
Recommender systems are essential for filtering immense amounts of available digital content. As the...
International audiencePurpose Social network platforms are considered today as a major communication...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
In this paper we consider how to help users to better understand their consumption profiles by exami...
The 33rd Annual ACM/ SIGAPP Symposium on Applied Computing (SAC\u2718), Pau, France, 9-13 April 2018...
In this paper we consider how to help users to better understand their consumption profiles by exam...
The prevalence of filter bubbles in recommender systems has raised concerns about the potential impa...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
When talking about personalization online, Google CEO Eric Schmidt recently said "it will be very ha...
Recommender systems focus on automatically surfacing suitable items for users from digital collectio...
Recommender systems aim to support users in identifying the most relevant items. However, there are ...
Research on recommender systems has traditionally focused on the development of algorithms to improv...
Social networking sites (SNSs) have applied personalized filtering to deal with overwhelmingly irrel...
Recommender systems tend to create filter bubbles and, as a consequence, lower diversity exposure, o...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems are essential for filtering immense amounts of available digital content. As the...
International audiencePurpose Social network platforms are considered today as a major communication...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
In this paper we consider how to help users to better understand their consumption profiles by exami...
The 33rd Annual ACM/ SIGAPP Symposium on Applied Computing (SAC\u2718), Pau, France, 9-13 April 2018...
In this paper we consider how to help users to better understand their consumption profiles by exam...
The prevalence of filter bubbles in recommender systems has raised concerns about the potential impa...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...
When talking about personalization online, Google CEO Eric Schmidt recently said "it will be very ha...
Recommender systems focus on automatically surfacing suitable items for users from digital collectio...
Recommender systems aim to support users in identifying the most relevant items. However, there are ...
Research on recommender systems has traditionally focused on the development of algorithms to improv...
Social networking sites (SNSs) have applied personalized filtering to deal with overwhelmingly irrel...
Recommender systems tend to create filter bubbles and, as a consequence, lower diversity exposure, o...
On many of today's most popular Internet service platforms, users are confronted with a seemingly en...
Recommender systems are essential for filtering immense amounts of available digital content. As the...
International audiencePurpose Social network platforms are considered today as a major communication...
A filter bubble refers to the phenomenon where Internet customization effectively isolates individua...