In this paper, we study the problem of protecting privacy in recommender systems. We focus on protecting the items rated by users and propose a novel privacy-preserving matrix factorization algorithm. In our algorithm, the user will submit a fake gradient to make the central server not able to distinguish which items are selected by the user. We make the Kullback–Leibler distance between the real and fake gradient distributions to be small thus hard to be distinguished. Using theories and experiments, we show that our algorithm can be reduced to a time-delay SGD, which can be proved to have a good convergence so that the accuracy will not decline. Our algorithm achieves a good tradeoff between the privacy and accuracy
Recommendation systems are information-filtering systems that tailor information to users on the bas...
Recommender systems leverage user demographic informa-tion, such as age, gender, etc., to personaliz...
The upsurge in the number of web users over the last two decades has resulted in a significant growt...
Recommender systems typically require users to reveal their ratings to a recommender service, which ...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
User profile perturbation protects privacy in the release of user profiles to receive recommendation...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
Protecting privacy in gradient-based learning has become increasingly critical as more sensitive inf...
Recommender algorithms are widely used, ranging from traditional Video on Demand to a wide variety o...
Recommendation systems are information-filtering systems that help users deal with information overl...
Recently, recommender systems have achieved promising performances and become one of the most widely...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
Recommender systems leverage user demographic informa-tion, such as age, gender, etc., to personaliz...
The upsurge in the number of web users over the last two decades has resulted in a significant growt...
Recommender systems typically require users to reveal their ratings to a recommender service, which ...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
User profile perturbation protects privacy in the release of user profiles to receive recommendation...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
Protecting privacy in gradient-based learning has become increasingly critical as more sensitive inf...
Recommender algorithms are widely used, ranging from traditional Video on Demand to a wide variety o...
Recommendation systems are information-filtering systems that help users deal with information overl...
Recently, recommender systems have achieved promising performances and become one of the most widely...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Recommendation systems are information-filtering systems that tailor information to users on the bas...
Recommender systems leverage user demographic informa-tion, such as age, gender, etc., to personaliz...
The upsurge in the number of web users over the last two decades has resulted in a significant growt...