The new-item cold-start problem is a well-known limitation of context-free and context-aware Collaborative Filtering (CF) prediction models. In such situations, only Content-based (CB) approaches can produce meaningful recommendations. In this paper, we propose three Context-Aware Content-Based (CACB) models that extend a linear CB prediction model with context-awareness by including additional parameters that represent the influence of context with respect to the users' interests and rating behaviour. The precision of the proposed models has been evaluated using a contextually-tagged rating data set for journey plans in the city of Barcelona (Spain), which has a high number of new items. We demonstrate that, in this data set, the most soph...
Context-aware recommendation (CR) is the task of recommending relevant items by exploring the contex...
In the digital era, users have, more than at any point in history, a large amount of products or ser...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
The new-item cold-start problem is a well-known limitation of context-free and context-aware Collabo...
Recommendation refers to the automatic process of discovering and suggesting new but relevant items ...
With the overwhelming volume of online multimedia content and increasing ubiquity of Internet-enable...
With the rapid growth of data in recent years, especially online and user-generated data, the role o...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Traditional recommendation systems utilise past users’ preferences to predict unknown ratings and re...
The final publication is available at Springer via https://doi.org/10.1007/978-0-387-74938-9_23Previ...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
In this work, we introduce the notion of Context-Based Prediction Models. A Context-Based Prediction...
In several domains contextual information plays a key role in the recommendation task, since factor...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Context-aware recommendation (CR) is the task of recommending relevant items by exploring the contex...
In the digital era, users have, more than at any point in history, a large amount of products or ser...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
The new-item cold-start problem is a well-known limitation of context-free and context-aware Collabo...
Recommendation refers to the automatic process of discovering and suggesting new but relevant items ...
With the overwhelming volume of online multimedia content and increasing ubiquity of Internet-enable...
With the rapid growth of data in recent years, especially online and user-generated data, the role o...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Traditional recommendation systems utilise past users’ preferences to predict unknown ratings and re...
The final publication is available at Springer via https://doi.org/10.1007/978-0-387-74938-9_23Previ...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
In this work, we introduce the notion of Context-Based Prediction Models. A Context-Based Prediction...
In several domains contextual information plays a key role in the recommendation task, since factor...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Context-aware recommendation (CR) is the task of recommending relevant items by exploring the contex...
In the digital era, users have, more than at any point in history, a large amount of products or ser...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...