Recent studies on recommendation have largely focused on exploring state-of-the-art neural networks to improve the expressiveness of models, while typically apply the Negative Sampling (NS) strategy for efficient learning. Despite effectiveness, two important issues have not been well-considered in existing methods: 1) NS suffers from dramatic fluctuation, making sampling-based methods difficult to achieve the optimal ranking performance in practical applications; 2) although heterogeneous feedback (e.g., view, click, and purchase) is widespread in many online systems, most existing methods leverage only one primary type of user feedback such as purchase. In this work, we propose a novel non-sampling transfer learning solution, named Effici...
We present a simple and scalable algorithm for top-N recommen- dation able to deal with very large ...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
To provide more accurate and stable recommendations, it is necessary to combine display information ...
Collaborative filtering techniques rely on aggregated user preference data to make personalized pred...
We propose a Joint Neural Collaborative Filtering (J-NCF) method for recommender systems. The J-NCF ...
Systems that recommend personalized lists of items to users are increasingly prevalent in our online...
Recently, recommendation has become a key technology in many online services. The quality of recomme...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Recommending a personalised list of items to users is a core task for many online services such...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
Research on recommender systems algorithms, like other areas of applied machine learning, is largely...
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...
In this paper, we tackle the incompleteness of user rating history in the context of collaborative f...
We present a simple and scalable algorithm for top-N recommen- dation able to deal with very large ...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
To provide more accurate and stable recommendations, it is necessary to combine display information ...
Collaborative filtering techniques rely on aggregated user preference data to make personalized pred...
We propose a Joint Neural Collaborative Filtering (J-NCF) method for recommender systems. The J-NCF ...
Systems that recommend personalized lists of items to users are increasingly prevalent in our online...
Recently, recommendation has become a key technology in many online services. The quality of recomme...
Despite the prevalence of collaborative filtering in recommendation systems, there has been little t...
Recommending a personalised list of items to users is a core task for many online services such...
The usage of Internet applications, such as social networking and e-commerce is increasing exponenti...
We study how to improve the accuracy and running time of top-N recommendation with collaborative fil...
Research on recommender systems algorithms, like other areas of applied machine learning, is largely...
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...
In this paper, we tackle the incompleteness of user rating history in the context of collaborative f...
We present a simple and scalable algorithm for top-N recommen- dation able to deal with very large ...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
To provide more accurate and stable recommendations, it is necessary to combine display information ...