International audienceCollaborative filtering is a popular technique for recommendation system due to its domain independence and reliance on user behavior data alone. But the possibility of identification of users based on these personal data raise privacy concerns. Differential privacy aims to minimize these identification risks by adding controlled noise with known characteristics. The addition of noise impacts the utility of the system and does not add any other value to the system other than enhanced privacy. We propose using sketching techniques to implicitly provide the differential privacy guarantees by taking advantage of the inherent randomness of the data structure. In particular, we use count sketch as a storage model for matrix...
Many applications of machine learning, such as human health research, involve processing private or ...
https://proceedings.neurips.cc/paper/2020/file/e3019767b1b23f82883c9850356b71d6-Paper.pd
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
International audienceCollaborative filtering is a popular technique for recommendation system due t...
Differential privacy is the standard privacy definition for performing analyses over sensitive data....
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
peer reviewedPrivacy issues of recommender systems have become a hot topic for the society as such s...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
In this thesis, we aim to study and evaluate the privacy and scalability properties of recommender s...
In the compressive learning framework, one harshly com-presses a whole training dataset into a singl...
This work addresses the problem of learning from large collections of data with privacy guarantees. ...
Recommender systems usually base their predictions on user-item interaction, a technique known as co...
International audienceIn the compressive learning framework, one harshly compresses a whole training...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Many applications of machine learning, such as human health research, involve processing private or ...
https://proceedings.neurips.cc/paper/2020/file/e3019767b1b23f82883c9850356b71d6-Paper.pd
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
International audienceCollaborative filtering is a popular technique for recommendation system due t...
Differential privacy is the standard privacy definition for performing analyses over sensitive data....
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
peer reviewedPrivacy issues of recommender systems have become a hot topic for the society as such s...
We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can...
In this thesis, we aim to study and evaluate the privacy and scalability properties of recommender s...
In the compressive learning framework, one harshly com-presses a whole training dataset into a singl...
This work addresses the problem of learning from large collections of data with privacy guarantees. ...
Recommender systems usually base their predictions on user-item interaction, a technique known as co...
International audienceIn the compressive learning framework, one harshly compresses a whole training...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Many applications of machine learning, such as human health research, involve processing private or ...
https://proceedings.neurips.cc/paper/2020/file/e3019767b1b23f82883c9850356b71d6-Paper.pd
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...