Many works have proposed integrating sentiment analysis with collaborative filtering algorithms to improve the accuracy of recommendation systems. As a result, service providers collect both reviews and ratings, which is increasingly causing privacy concerns among users. Several works have used the Local Differential Privacy (LDP) based input perturbation mechanism to address privacy concerns related to the aggregation of ratings. However, researchers have failed to address whether perturbing just ratings can protect the privacy of users when both reviews and ratings are collected. We answer this question in this paper by applying an LDP based perturbation mechanism in a recommendation system that integrates collaborative filtering with a s...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
Privacy preserving is an essential aspect of modern recommender systems. However, the traditional ap...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
In the context of the era of big data,various industries want to train recommendation models based o...
In this thesis a number of models for recommender systems are explored, all using collaborative filt...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
Collaborative filtering is a popular approach for building an efficient and scalable recommender sys...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
peer reviewedPrivacy issues of recommender systems have become a hot topic for the society as such s...
With the evolution of the Internet, collaborative filtering (CF) techniques are becoming increasingl...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
Privacy preserving is an essential aspect of modern recommender systems. However, the traditional ap...
Recommendation systems rely heavily on behavioural and preferential data (e.g. ratings and likes) of...
Unethical data aggregation practices of many recommendation systems have raised privacy concerns amo...
In recent years recommendation systems have become popular in the e-commerce industry as they can be...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
In the context of the era of big data,various industries want to train recommendation models based o...
In this thesis a number of models for recommender systems are explored, all using collaborative filt...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
Collaborative filtering is a popular approach for building an efficient and scalable recommender sys...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
peer reviewedPrivacy issues of recommender systems have become a hot topic for the society as such s...
With the evolution of the Internet, collaborative filtering (CF) techniques are becoming increasingl...
In order to solve the problem of data sparsity and credibility in collaborative filtering, a recomme...
With the continuous growth of the Internet and the progress of electronic commerce the issues of pro...
Privacy preserving is an essential aspect of modern recommender systems. However, the traditional ap...