Unethical data aggregation practices of many recommendation systems have raised privacy concerns among users. Local differential privacy (LDP) based recommendation systems address this problem by perturbing a user’s original data locally in their device before sending it to the data aggregator (DA). The DA performs recommendations over perturbed data which causes substantial prediction error. To tackle privacy and utility issues with untrustworthy DA in recommendation systems, we propose a novel LDP matrix factorization (MF) with mixture of Gaussian (MoG). We use a Bounded Laplace mechanism (BLP) to perturb user’s original ratings locally. BLP restricts the perturbed ratings to a predefined output domain, thus reducing the level of noise ag...
Recent years have witnessed the rapid growth of federated learning (FL), an emerging privacy-aware m...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Over the past decades, the Internet has served as the backbone connecting people to others, places a...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
Many works have proposed integrating sentiment analysis with collaborative filtering algorithms to i...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
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 the context of the era of big data,various industries want to train recommendation models based o...
Applications such as e-commerce, smart home appliances, and healthcare systems, amongst other thing...
International audienceCollaborative filtering is a popular technique for recommendation system due t...
The development of 5G technology has driven the rise of e-commerce, social networking, and the Inter...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
Recommender systems, which play a critical role in e-business services, are closely linked to our da...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Recent years have witnessed the rapid growth of federated learning (FL), an emerging privacy-aware m...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Over the past decades, the Internet has served as the backbone connecting people to others, places a...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
Many works have proposed integrating sentiment analysis with collaborative filtering algorithms to i...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
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 the context of the era of big data,various industries want to train recommendation models based o...
Applications such as e-commerce, smart home appliances, and healthcare systems, amongst other thing...
International audienceCollaborative filtering is a popular technique for recommendation system due t...
The development of 5G technology has driven the rise of e-commerce, social networking, and the Inter...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
Recommender systems, which play a critical role in e-business services, are closely linked to our da...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Recent years have witnessed the rapid growth of federated learning (FL), an emerging privacy-aware m...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Over the past decades, the Internet has served as the backbone connecting people to others, places a...