Recent efforts in recommender systems research focus increasingly on human factors affecting recommendation acceptance, such as transparency and user control. In this paper, we present IntersectionExplorer, a scalable visualization to interleave the output of several recommender engines with user-contributed relevance information, such as bookmarks and tags. Two user studies at conferences indicate that this approach is well suited for technical audiences in smaller venues, and allowed the identification of applicability limitations for less technical audiences attending larger events.no issnstatus: publishe
Offering diversity in the output of a recommender system is an active research question. Most of the...
The beyond-relevance objectives of recommender systems have been drawing more and more attention. Fo...
As an interactive intelligent system, recommender systems are developed to give recommendations that...
Recent efforts in recommender systems research focus increasingly on human factors affecting recomme...
In this paper, we advent a novel approach to foster exploration of recommendations: IntersectionExpl...
Research on recommender systems has traditionally focused on the development of algorithms to improv...
Recent efforts in recommender systems research focus increasingly on human factors that affect accep...
Recommender systems are currently an ubiquitous presence on the web, helping us find relevant items ...
Several approaches have been researched to help people deal with abundance of information. An import...
Several approaches have been researched to help people deal with abundance of information. An import...
Several approaches have been researched to help people deal with abundance of information. An import...
© 2016 ACM 2160-6455/2016/07-ART11 $15.00. Several approaches have been researched to help people de...
Recommender systems have been researched extensively over the past decades. Whereas several algorit...
Research in recommender systems has traditionally focused on improving the predictive accuracy of re...
Increasing diversity in the output of a recommender system is an active research question for solvin...
Offering diversity in the output of a recommender system is an active research question. Most of the...
The beyond-relevance objectives of recommender systems have been drawing more and more attention. Fo...
As an interactive intelligent system, recommender systems are developed to give recommendations that...
Recent efforts in recommender systems research focus increasingly on human factors affecting recomme...
In this paper, we advent a novel approach to foster exploration of recommendations: IntersectionExpl...
Research on recommender systems has traditionally focused on the development of algorithms to improv...
Recent efforts in recommender systems research focus increasingly on human factors that affect accep...
Recommender systems are currently an ubiquitous presence on the web, helping us find relevant items ...
Several approaches have been researched to help people deal with abundance of information. An import...
Several approaches have been researched to help people deal with abundance of information. An import...
Several approaches have been researched to help people deal with abundance of information. An import...
© 2016 ACM 2160-6455/2016/07-ART11 $15.00. Several approaches have been researched to help people de...
Recommender systems have been researched extensively over the past decades. Whereas several algorit...
Research in recommender systems has traditionally focused on improving the predictive accuracy of re...
Increasing diversity in the output of a recommender system is an active research question for solvin...
Offering diversity in the output of a recommender system is an active research question. Most of the...
The beyond-relevance objectives of recommender systems have been drawing more and more attention. Fo...
As an interactive intelligent system, recommender systems are developed to give recommendations that...