In recent years recommendation systems have become popular in the e-commerce industry as they can be used to provide a personalized experience to users. However, performing analytics on users' information has also raised privacy concerns. Various privacy protection mechanisms have been proposed for recommendation systems against user-side adversaries. However most of them disregards the privacy violations caused by the service providers. In this paper, we propose a local differential privacy mechanism for matrix factorization based recommendation systems. In our mechanism, users perturb their ratings locally on their devices using Laplace and randomized response mechanisms and send the perturbed ratings to the service provider. We evaluate ...
By offering personalized content to users, recommender systems have become a vital tool in e-commerc...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
The 13th ACM Conference on Recommender Systems (RecSys'19), Copenhagen, Denmark, 16-20 September 201...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Many works have proposed integrating sentiment analysis with collaborative filtering algorithms to i...
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
In this paper, we study the problem of protecting privacy in recommender systems. We focus on protec...
In the past decades, the ever-increasing popularity of the Internet has led to an explosive growth o...
Cross-domain recommender systems are known to provide solutions to the cold start and data sparsity ...
In the context of the era of big data,various industries want to train recommendation models based o...
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...
Recommender systems are commonly trained on centrally collected user interaction data like views or ...
Recommender systems usually base their predictions on user-item interaction, a technique known as co...
By offering personalized content to users, recommender systems have become a vital tool in e-commerc...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
The 13th ACM Conference on Recommender Systems (RecSys'19), Copenhagen, Denmark, 16-20 September 201...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Many works have proposed integrating sentiment analysis with collaborative filtering algorithms to i...
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
In this paper, we study the problem of protecting privacy in recommender systems. We focus on protec...
In the past decades, the ever-increasing popularity of the Internet has led to an explosive growth o...
Cross-domain recommender systems are known to provide solutions to the cold start and data sparsity ...
In the context of the era of big data,various industries want to train recommendation models based o...
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...
Recommender systems are commonly trained on centrally collected user interaction data like views or ...
Recommender systems usually base their predictions on user-item interaction, a technique known as co...
By offering personalized content to users, recommender systems have become a vital tool in e-commerc...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
The 13th ACM Conference on Recommender Systems (RecSys'19), Copenhagen, Denmark, 16-20 September 201...