Recommender systems have always faced the problem of sparse data. In the current era, however, with its demand for highly personalized, real-time, context-aware recommendation, the sparse data problem only threatens to grow worse. Crowdsourcing, specifically, outsourcing micro-requests for information to the crowd, opens new possibilities to fight the sparse data challenge. In this paper, we lay out a vision for recommender systems that, instead of consulting an external crowd, rely on their own user base to actively supply the rich information needed to improve recommendations. We propose that recommender systems should create and exploit reciprocity between users and items. Specifically, recommender systems should not only reco...
Crowdsourcing is an approach where requesters can call for workers with different capabilities to pr...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
There are increasingly many personalization services in ubiquitous computing environments that invol...
Published version available at http://crowdrec2013.noahlab.com.hk/papers/crowdrec2013_Larson.pdfReco...
Data consumption has changed significantly in the last 10 years. The digital revolution and the Int...
Data consumption has changed significantly in the last 10 years. The digital revolution and the Inte...
A Recommendation or Suggestion System (RSS) helps on-demand digital content and social media platfor...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
In order to satisfy and positively surprise the users, a recommender system needs to recommend items...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
There are increasingly many personalization services in ubiquitous computing environments that invol...
In recent times, collaborative filtering based Recommender Systems (RS) have become extremely popula...
Recent work has shown the value of treating recommendation as a conversation between user and system...
International audienceRecommender Systems (RS) aim at suggesting to users one or several items in wh...
Recommender Systems (RS) aim at suggesting to users one or several items in which they might have in...
Crowdsourcing is an approach where requesters can call for workers with different capabilities to pr...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
There are increasingly many personalization services in ubiquitous computing environments that invol...
Published version available at http://crowdrec2013.noahlab.com.hk/papers/crowdrec2013_Larson.pdfReco...
Data consumption has changed significantly in the last 10 years. The digital revolution and the Int...
Data consumption has changed significantly in the last 10 years. The digital revolution and the Inte...
A Recommendation or Suggestion System (RSS) helps on-demand digital content and social media platfor...
108 pagesOver the last few decades, recommender systems have become important in affecting people's ...
In order to satisfy and positively surprise the users, a recommender system needs to recommend items...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
There are increasingly many personalization services in ubiquitous computing environments that invol...
In recent times, collaborative filtering based Recommender Systems (RS) have become extremely popula...
Recent work has shown the value of treating recommendation as a conversation between user and system...
International audienceRecommender Systems (RS) aim at suggesting to users one or several items in wh...
Recommender Systems (RS) aim at suggesting to users one or several items in which they might have in...
Crowdsourcing is an approach where requesters can call for workers with different capabilities to pr...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
There are increasingly many personalization services in ubiquitous computing environments that invol...