Recommender systems have been widely adopted by onlinee-commerce websites like Amazon and music streaming services like Spotify. However, most research efforts have not sufficiently considered the context in which recommendations are made, especially when the input is implicit.In this work, we investigate the value of including contextual information like day-of-week in collaborative filtering recommender systems. For the investigation, we first implemented two algorithms, namely contextual prefiltering and contextual post-filtering. Then, we evaluated these algorithms with user data collected from Spotify.Experiment results show that the pre-filtering algorithm shows some promise against an item similarity baseline, indicating that further...
Traditional recommendation systems utilise past users’ preferences to predict unknown ratings and re...
The design of recommendation algorithms aware of the user’s context has been the subject of great in...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Recommender systems have been widely adopted by onlinee-commerce websites like Amazon and music stre...
Recommender systems are helpful tools employed abundantly in online applications to help users find ...
Recommender systems are systems that provide recommendations to a user based on information gathered...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recently, there has been growing interest in recommender systems (RS) and particularly in context-aw...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
Recommender systems can assist with decision-making by delivering a list of item recommendations tai...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
Context-aware recommender systems (CARSs) gradually play a crucial role in modern information system...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
Traditional recommendation systems utilise past users’ preferences to predict unknown ratings and re...
The design of recommendation algorithms aware of the user’s context has been the subject of great in...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Recommender systems have been widely adopted by onlinee-commerce websites like Amazon and music stre...
Recommender systems are helpful tools employed abundantly in online applications to help users find ...
Recommender systems are systems that provide recommendations to a user based on information gathered...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recently, there has been growing interest in recommender systems (RS) and particularly in context-aw...
Recommender systems emerged in the mid '90s with the objective of helping users select items or prod...
Recommender systems can assist with decision-making by delivering a list of item recommendations tai...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
Context-aware recommender systems (CARSs) gradually play a crucial role in modern information system...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
Traditional recommendation systems utilise past users’ preferences to predict unknown ratings and re...
The design of recommendation algorithms aware of the user’s context has been the subject of great in...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...