We develop a novel framework, named as l-injection, to address the sparsity problem of recommender systems. By vigilant injecting low values to a selected set of unrated user-item pairs in a user-item matrix, we demonstrate that top-N recommendation accuracies of various collaborative filtering (CF) techniques can be significantly and consistently improved. We first adopt the notion of pre-use preferences of users toward a vast amount of unrated items. Using this notion, we identify uninteresting items that have not been rated yet but are likely to receive low ratings from users, and selectively impute them as low values. As our suggested approach is method-agnostic, it can be easily applied to a variety of CF algorithms. Through extensive ...
Past work on the evaluation of recommender systems indicates that collaborative filtering algorithms...
Recommending a personalised list of items to users is a core task for many online services such...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
Collaborative filtering methods suffer from a data sparsity problem, which indicates that the accura...
Collaborative filtering methods suffer from a data sparsity problem, which indicates that the accura...
As one of the most successful approaches to building recommender systems, collaborative filtering (C...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
© 2016 ACM. There is much empirical evidence that item-item collaborative filtering works well in pr...
Recommender systems are an essential part of online businesses in today's day and age. They provide ...
Abstract—Recommender systems are often used to provide useful recommendations for users. They use ...
The tremendous growth in the amount of available information and the number of visitors to Web sites...
The traditional user-based collaborative filtering (CF) algorithms often suffer from two important p...
Past work on the evaluation of recommender systems indicates that collaborative filtering algorithms...
Recommending a personalised list of items to users is a core task for many online services such...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
Collaborative filtering methods suffer from a data sparsity problem, which indicates that the accura...
Collaborative filtering methods suffer from a data sparsity problem, which indicates that the accura...
As one of the most successful approaches to building recommender systems, collaborative filtering (C...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
© 2016 ACM. There is much empirical evidence that item-item collaborative filtering works well in pr...
Recommender systems are an essential part of online businesses in today's day and age. They provide ...
Abstract—Recommender systems are often used to provide useful recommendations for users. They use ...
The tremendous growth in the amount of available information and the number of visitors to Web sites...
The traditional user-based collaborative filtering (CF) algorithms often suffer from two important p...
Past work on the evaluation of recommender systems indicates that collaborative filtering algorithms...
Recommending a personalised list of items to users is a core task for many online services such...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...