In this paper, we tackle the incompleteness of user rating history in the context of collaborative filtering for Top-N recommendations. Previous research ignore a fact that two rating patterns exist in the user × item rating matrix and influence each other. More importantly, their interactive influence characterizes the development of each other, which can consequently be exploited to improve the modelling of rating patterns, especially when the user × item rating matrix is highly incomplete due to the well-known data sparsity issue. This paper proposes a Rating Pattern Subspace to iteratively re-optimize the missing values in each user’s rating history by modelling both the global and the personal rati...
Current data has the characteristics of complexity and low information density, which can be called ...
Recommender systems become increasingly significant in solving the information explosion problem. Da...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
In this paper, we study the problem of retrieving a ranked list of top-N items to a target user in r...
Top-N recommender systems have been investigated widely both in industry and academia. However, the ...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
In this paper, we observe that the user preference styles tend to change regularly following certain...
Matrix completion has become a popular method for top-N recommendation due to the low rank nature of...
Research on recommender systems algorithms, like other areas of applied machine learning, is largely...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
We present a simple and scalable algorithm for top-N recommen- dation able to deal with very large d...
Top-N recommendation is an important recommendation technique that delivers a ranked top-N item list...
Recommender systems are frequently used in domains in which users express their preferences in the f...
In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating value...
Current data has the characteristics of complexity and low information density, which can be called ...
Recommender systems become increasingly significant in solving the information explosion problem. Da...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
In this paper, we study the problem of retrieving a ranked list of top-N items to a target user in r...
Top-N recommender systems have been investigated widely both in industry and academia. However, the ...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
In this paper, we observe that the user preference styles tend to change regularly following certain...
Matrix completion has become a popular method for top-N recommendation due to the low rank nature of...
Research on recommender systems algorithms, like other areas of applied machine learning, is largely...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
We present a simple and scalable algorithm for top-N recommen- dation able to deal with very large d...
Top-N recommendation is an important recommendation technique that delivers a ranked top-N item list...
Recommender systems are frequently used in domains in which users express their preferences in the f...
In many commercial systems, the 'best bet' recommendations are shown, but the predicted rating value...
Current data has the characteristics of complexity and low information density, which can be called ...
Recommender systems become increasingly significant in solving the information explosion problem. Da...
Top-N item recommendation is one of the important tasks of rec-ommenders. Collaborative filtering is...