Recommender systems emerged in the mid '90s with the objective of helping users select items or products most suited for them. Whether it is Facebook recommending people you might know, Spotify recommending songs you might like or Youtube recommending videos you might want to watch, recommender systems can now be found in every corner of the internet. In order to handle the immense increase of data online, the development of sophisticated recommender systems is crucial for filtering out information, enhancing web services by tailoring them according to the preferences of the user. This thesis aims to improve the accuracy of recommendations produced by a classical collaborative filtering recommender system by utilizing temporal properties, m...
The thesis presents the results of research into temporal preference analysis in recommender systems...
Recommender systems are in the center of network science, and they are becoming increasingly importa...
Collaborative Filtering (CF) algorithms, used to build web-based recommender systems, are often eval...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
The need for effective technologies to help Web users locate items (information or products) is incr...
As an important factor for improving recommendations, time information has been introduced to model ...
Recommender systems are used in various applications to boost the prediction accuracy of user prefer...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
With the rapid development of the information technologies in the financial field, extracting meanin...
Recommender systems use the records of users' activities and profiles of both users and products to...
Recommender systems aim to suggest relevant items to users among a large number of available items. ...
Abstract—In recent years, time information is more and more important in collaborative filtering (CF...
The aim of a recommender system is filtering the enormous quantity of information to obtain useful i...
Collaborative filtering is regarded as one of the most promising recommendation algorithms. The item...
Part 4: Complex System Modelling and SimulationInternational audienceThis paper proposes an improved...
The thesis presents the results of research into temporal preference analysis in recommender systems...
Recommender systems are in the center of network science, and they are becoming increasingly importa...
Collaborative Filtering (CF) algorithms, used to build web-based recommender systems, are often eval...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
The need for effective technologies to help Web users locate items (information or products) is incr...
As an important factor for improving recommendations, time information has been introduced to model ...
Recommender systems are used in various applications to boost the prediction accuracy of user prefer...
Most recommender algorithms in use today are slow to adapt to changes in user preferences. This is b...
With the rapid development of the information technologies in the financial field, extracting meanin...
Recommender systems use the records of users' activities and profiles of both users and products to...
Recommender systems aim to suggest relevant items to users among a large number of available items. ...
Abstract—In recent years, time information is more and more important in collaborative filtering (CF...
The aim of a recommender system is filtering the enormous quantity of information to obtain useful i...
Collaborative filtering is regarded as one of the most promising recommendation algorithms. The item...
Part 4: Complex System Modelling and SimulationInternational audienceThis paper proposes an improved...
The thesis presents the results of research into temporal preference analysis in recommender systems...
Recommender systems are in the center of network science, and they are becoming increasingly importa...
Collaborative Filtering (CF) algorithms, used to build web-based recommender systems, are often eval...