Social recommendation, which aims at improving the performance of traditional recommender systems by considering social information, has attracted broad range of interests. As one of the most widely used methods, matrix factorization typically uses continuous vectors to represent user/item latent features. However, the large volume of user/item latent features results in expensive storage and computation cost, particularly on terminal user devices where the computation resource to operate model is very limited. Thus when taking extra social information into account, precisely extracting K most relevant items for a given user from massive candidates tends to consume even more time and memory, which imposes formidable challenges for efficient...
Although recommendation systems are the most important methods for resolving the ”information overlo...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Combining matrix factorization (MF) with network embedding (NE) has been a promising solution to soc...
The efficiency of top-k recommendation is vital to large-scale recommender systems. Hashing is not o...
© 2018 Association for Computing Machinery. The efficiency of top-k recommendation is vital to large...
Personalized ranking is usually considered as an ultimate goal of recommendation systems, but it suf...
© 2017 ACM. Precisely recommending relevant items from massive candidates to a large number of users...
For personalized recommender systems, matrix factorization and its variants have become mainstream i...
People in the Internet era have to cope with the information overload, striving to find what they ar...
People in the Internet era have to cope with the information overload, striving to find wh...
This paper tackles the efficiency problem of making recom-mendations in the context of large user an...
This paper tackles the efficiency problem of making recom-mendations in the context of large user an...
© 2017 IEEE. Traditional recommender systems assume that all the users are independent, and they usu...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
Although recommendation systems are the most important methods for resolving the ”information overlo...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...
Combining matrix factorization (MF) with network embedding (NE) has been a promising solution to soc...
The efficiency of top-k recommendation is vital to large-scale recommender systems. Hashing is not o...
© 2018 Association for Computing Machinery. The efficiency of top-k recommendation is vital to large...
Personalized ranking is usually considered as an ultimate goal of recommendation systems, but it suf...
© 2017 ACM. Precisely recommending relevant items from massive candidates to a large number of users...
For personalized recommender systems, matrix factorization and its variants have become mainstream i...
People in the Internet era have to cope with the information overload, striving to find what they ar...
People in the Internet era have to cope with the information overload, striving to find wh...
This paper tackles the efficiency problem of making recom-mendations in the context of large user an...
This paper tackles the efficiency problem of making recom-mendations in the context of large user an...
© 2017 IEEE. Traditional recommender systems assume that all the users are independent, and they usu...
Conference paperData sparsity, scalability and prediction quality have been recognized as the three ...
Although recommendation systems are the most important methods for resolving the ”information overlo...
Data sparsity, scalability and prediction quality have been recognized as the three most crucial cha...
The development of Web 2.0 and the rapid growth of available data have led to the development of sys...