In this paper, we propose a framework that enables the detection of noise in recommender system databases. We consider two classes of noise: natural and malicious noise. The issue of natural noise arises from imperfect user behaviour (e.g. erroneous/careless preference selection) and the various rating collection processes that are employed. Malicious noise concerns the deliberate attempt to bias system output in some particular manner. We argue that both classes of noise are important and can adversely e#ect recommendation performance. Our objective is to devise techniques that enable system administrators to identify and remove from the recommendation process any such noise that is present in the data. We provide an empirical evaluation o...
This tutorial provides a common ground for both researchers and practitioners interested in data and...
Recommender systems help users to find products or services they may like when lacking personal expe...
With the rapid growth of information, recommender systems have become integral for providing persona...
© 2016 Elsevier B.V. Group recommender systems (GRSs) filter relevant items to groups of users in ov...
© Springer International Publishing AG 2016. E-commerce customers demand quick and easy access to su...
International audienceUnderstanding user behavior in the context of recommender systems remains chal...
© 2017 Elsevier Ltd Information filtering is a key task in scenarios with information overload. Grou...
A common approach to designing Recommender Systems (RS) consists of asking users to explicitly rate ...
Recommender systems are vulnerable to shilling attacks. Forged user-generated content data, such as ...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
In pervasive/ubiquitous computing environments, interacting users may evaluate their respective trus...
The commercial platforms that use recommender systems can collect relevant information to produce us...
Recommender systems have emerged in the past several years as an effective way to help people cope w...
Abstract—Recommender systems are popular applications that help users to identify items that they co...
Noise filtering can be considered an important preprocessing step in the data mining process, making...
This tutorial provides a common ground for both researchers and practitioners interested in data and...
Recommender systems help users to find products or services they may like when lacking personal expe...
With the rapid growth of information, recommender systems have become integral for providing persona...
© 2016 Elsevier B.V. Group recommender systems (GRSs) filter relevant items to groups of users in ov...
© Springer International Publishing AG 2016. E-commerce customers demand quick and easy access to su...
International audienceUnderstanding user behavior in the context of recommender systems remains chal...
© 2017 Elsevier Ltd Information filtering is a key task in scenarios with information overload. Grou...
A common approach to designing Recommender Systems (RS) consists of asking users to explicitly rate ...
Recommender systems are vulnerable to shilling attacks. Forged user-generated content data, such as ...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
In pervasive/ubiquitous computing environments, interacting users may evaluate their respective trus...
The commercial platforms that use recommender systems can collect relevant information to produce us...
Recommender systems have emerged in the past several years as an effective way to help people cope w...
Abstract—Recommender systems are popular applications that help users to identify items that they co...
Noise filtering can be considered an important preprocessing step in the data mining process, making...
This tutorial provides a common ground for both researchers and practitioners interested in data and...
Recommender systems help users to find products or services they may like when lacking personal expe...
With the rapid growth of information, recommender systems have become integral for providing persona...