Collaborative filtering is a useful technique for exploiting the preference patterns of a group of users to predict the utility of items for the active user. In general, the performance of collaborative filtering depends on the number of rated examples given by the active user. The more the number of rated examples given by the active user, the more accurate the predicted ratings will be. Active learning provides an effective way to acquire the most informative rated examples from active users. Previous work on active learning for collaborative filtering only considers the expected loss function based on the estimated model, which can be misleading when the estimated model is inaccurate. This paper takes one step further by taking into acco...
Information theoretic active learning has been widely studied for prob-abilistic models. For simple ...
The lack of information is an acute challenge in most recommender systems, especially for the collab...
AbstractActive learning for collaborative filtering tasks draws many attentions from the research co...
Collaborative filtering is a useful technique for exploiting the preference patterns of a group of ...
In this paper we will present the basic properties of Bayesian network models, and discuss why this ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Collaborative filtering is the process of making recommendations regarding the potential preference...
Abstract. In Collaborative Filtering Recommender Systems user’s pref-erences are expressed in terms ...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Bayesian networks are graphical representations of probability distributions. In virtually all of th...
The performance of collaborative filtering recommender systems can suffer when data is sparse, for e...
There has been growing recent interest in the field of active learning for binary classification. Th...
Collaborative filtering systems based on ratings make it easier for users to find content of interes...
International audienceRecommender Systems enhance user access to relevant items formation, product b...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
Information theoretic active learning has been widely studied for prob-abilistic models. For simple ...
The lack of information is an acute challenge in most recommender systems, especially for the collab...
AbstractActive learning for collaborative filtering tasks draws many attentions from the research co...
Collaborative filtering is a useful technique for exploiting the preference patterns of a group of ...
In this paper we will present the basic properties of Bayesian network models, and discuss why this ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
Collaborative filtering is the process of making recommendations regarding the potential preference...
Abstract. In Collaborative Filtering Recommender Systems user’s pref-erences are expressed in terms ...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Bayesian networks are graphical representations of probability distributions. In virtually all of th...
The performance of collaborative filtering recommender systems can suffer when data is sparse, for e...
There has been growing recent interest in the field of active learning for binary classification. Th...
Collaborative filtering systems based on ratings make it easier for users to find content of interes...
International audienceRecommender Systems enhance user access to relevant items formation, product b...
Collaborative filtering (CF) is a novel statistical technique developed to retrieve useful informati...
Information theoretic active learning has been widely studied for prob-abilistic models. For simple ...
The lack of information is an acute challenge in most recommender systems, especially for the collab...
AbstractActive learning for collaborative filtering tasks draws many attentions from the research co...