Personalized ranking methods are at the core of many systems that learn to produce recommendations from user feedbacks. Their primary objective is to identify relevant items from very large vocabularies and to assist users in discovering new content. These techniques have proven successful in stationary regimes, but the transition to an interactive and social Web, and the rise of user-generated content, increasingly require learning from dynamic factors. Existing approaches, based on distributed vector representations, notoriously fail in fast-changing contexts and sparse regimes; their static representation of users and items prevents them from adapting to contextual changes. Given this limitation, this thesis focuses on introducing new me...
With the rapid proliferation of online social networks, personalized social recommendation has becom...
Recommending products to users means estimating their prefer-ences for certain items over others. Th...
The exploration of online social networks whose members share mutual recommendations and interaction...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
Social media provides valuable resources to analyze user behaviors and capture user preferences. Thi...
The emergence of social tagging systems enables users to organize and share their interested resourc...
© 2015 ACM 1046-8188/2015/03-ART10 $15.00. Social media provides valuable resources to analyze user ...
Abstract—Current recommender systems exploit user and item similarities by collaborative filtering. ...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
As an important factor for improving recommendations, time information has been introduced to model ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Due to the potent...
Capturing users’ preference that change over time is a great challenge in recommendation systems. Wh...
Most existing collaborative filtering models only consider the use of user feedback (e. g., ratings)...
In light of the prosperity of online social media, Web users are shifting from data consumers to dat...
With the rapid proliferation of online social networks, personalized social recommendation has becom...
Recommending products to users means estimating their prefer-ences for certain items over others. Th...
The exploration of online social networks whose members share mutual recommendations and interaction...
In real-world scenarios, user preferences for items are constantly drifting over time as item percep...
Social media provides valuable resources to analyze user behaviors and capture user preferences. Thi...
The emergence of social tagging systems enables users to organize and share their interested resourc...
© 2015 ACM 1046-8188/2015/03-ART10 $15.00. Social media provides valuable resources to analyze user ...
Abstract—Current recommender systems exploit user and item similarities by collaborative filtering. ...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
As an important factor for improving recommendations, time information has been introduced to model ...
University of Technology Sydney. Faculty of Engineering and Information Technology.Due to the potent...
Capturing users’ preference that change over time is a great challenge in recommendation systems. Wh...
Most existing collaborative filtering models only consider the use of user feedback (e. g., ratings)...
In light of the prosperity of online social media, Web users are shifting from data consumers to dat...
With the rapid proliferation of online social networks, personalized social recommendation has becom...
Recommending products to users means estimating their prefer-ences for certain items over others. Th...
The exploration of online social networks whose members share mutual recommendations and interaction...