Collaborative filtering is one of the most popular techniques in designing recommendation systems, and its most representative model, matrix factorization, has been wildly used by researchers and the industry. However, this model suffers from the lack of interpretability and the item cold-start problem, which limit its reliability and practicability. In this paper, we propose an interpretable recommendation model called Multi-Matrix Factorization (MMF), which addresses these two limitations and achieves the state-of-the-art prediction accuracy by exploiting common attributes that are present in different items. In the model, predicted item ratings are regarded as weighted aggregations of attribute ratings generated by the inner product of t...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
Matrix factorization (MF) is a powerful approach used in recommender systems. One main drawback of M...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
© 2016, Springer Science+Business Media New York. Recommender Systems (RS) have been comprehensively...
In this paper, we propose a method to improve the accuracy of item-based collaborative filtering rec...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
Collaborative filtering (CF)-based recommenders are achieved by matrix factorization (MF) to obtain ...
Collaborative filtering (CF), particularly matrix factorization (MF) based methods, have been widely...
The essence of the challenges cold start and sparsity in Recommender Systems (RS) is that the extant...
Collaborative filtering (CF) has achieved great success in the field of recommender systems. In rece...
Abstract—Recommender system has attracted lots of attentions since it helps users alleviate the info...
Recommender system methods rely on finding correlations between users and items by analysing their d...
© 2015, The Natural Computing Applications Forum. Many existing recommendation methods such as matri...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
Matrix factorization (MF) is a powerful approach used in recommender systems. One main drawback of M...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
© 2016, Springer Science+Business Media New York. Recommender Systems (RS) have been comprehensively...
In this paper, we propose a method to improve the accuracy of item-based collaborative filtering rec...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
Collaborative filtering (CF)-based recommenders are achieved by matrix factorization (MF) to obtain ...
Collaborative filtering (CF), particularly matrix factorization (MF) based methods, have been widely...
The essence of the challenges cold start and sparsity in Recommender Systems (RS) is that the extant...
Collaborative filtering (CF) has achieved great success in the field of recommender systems. In rece...
Abstract—Recommender system has attracted lots of attentions since it helps users alleviate the info...
Recommender system methods rely on finding correlations between users and items by analysing their d...
© 2015, The Natural Computing Applications Forum. Many existing recommendation methods such as matri...
Although users' preference is semantically reflected in the free-form review texts, this wealth of i...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
Matrix factorization (MF) is a powerful approach used in recommender systems. One main drawback of M...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...