Combining matrix factorization (MF) with network embedding (NE) has been a promising solution to social recommender systems. However, such a scheme suffers from the online predictive efficiency issue due to the ever-growing users and items. In this paper, we propose a novel hashing-based social recommendation model, called semi-discrete socially embedded matrix factorization (S2MF), which leverages the dual advantages of social information for recommendation effectiveness and hashing trick for online predictive efficiency. Experimental results demonstrate the advantages of S2MF over state-of-the-art discrete recommendation models and its real-valued competitors
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Social voting is a promising new feature in online social networks. It has distinctive challenges an...
Online friend recommendation is a fast developing topic in web mining. In this paper, we used SVD ma...
Social recommendation, which aims at improving the performance of traditional recommender systems by...
Recently, a new paradigm of social network based recommendation approach has emerged wherein structu...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Although recommendation systems are the most important methods for resolving the ”information overlo...
© 2017 IEEE. Traditional recommender systems assume that all the users are independent, and they usu...
Social voting is an emerging new feature in online social networks. It poses unique challenges and o...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
The efficiency of top-k recommendation is vital to large-scale recommender systems. Hashing is not o...
Collaborative filtering (CF) is a common recommendation mechanism that relies on user-item ratings. ...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
© 2018 Association for Computing Machinery. The efficiency of top-k recommendation is vital to large...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Social voting is a promising new feature in online social networks. It has distinctive challenges an...
Online friend recommendation is a fast developing topic in web mining. In this paper, we used SVD ma...
Social recommendation, which aims at improving the performance of traditional recommender systems by...
Recently, a new paradigm of social network based recommendation approach has emerged wherein structu...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Although recommendation systems are the most important methods for resolving the ”information overlo...
© 2017 IEEE. Traditional recommender systems assume that all the users are independent, and they usu...
Social voting is an emerging new feature in online social networks. It poses unique challenges and o...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
The efficiency of top-k recommendation is vital to large-scale recommender systems. Hashing is not o...
Collaborative filtering (CF) is a common recommendation mechanism that relies on user-item ratings. ...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
© 2018 Association for Computing Machinery. The efficiency of top-k recommendation is vital to large...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Matrix factorization (MF) has been proved to be an effective approach to build a successful recommen...
Social voting is a promising new feature in online social networks. It has distinctive challenges an...
Online friend recommendation is a fast developing topic in web mining. In this paper, we used SVD ma...