Data warehouses store large volumes of consolidated and historized multidimensional data for analysis and exploration by decision-makers. Exploring data is an incremental OLAP (On-Line Analytical Processing) query process for searching relevant information in a dataset. In order to ease user exploration, recommender systems are used. However when facing a new system, such recommendations do not operate anymore. This is known as the cold-start problem. In this paper, we provide recommendations to the user while facing this cold-start problem in a new system. This is done by patternizing OLAP queries. Our process is composed of four steps: patternizing queries, predicting candidate operations, computing candidate recommendations and ranking t...
Recommender system is a specific type of intelligent systems, which exploits historical user ratings...
To develop a recommender system, the collaborative filtering is the best known approach, which consi...
Most of the recent studies on recommender systems are focused on single domain recommendation system...
International audienceData warehouses store large volumes of consolidated and historized multidimens...
Data warehouses store large volumes of consolidated and historized multidimensional data for analysi...
There is a substantial increase in demand for recommender systems which have applications in a varie...
International audienceThis paper focuses on the new users cold-start issue in the context of recomme...
International audienceHow can we effectively recommend items to a user about whom we have no informa...
Recommender systems model user preferences by exploiting their profiles, historical transactions, an...
Cold start recommendations are important because they help build user loyalty, which is the key to t...
We have developed a method for recommending items that combines content and collaborative data under...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
This thesis studies the problem of predicting the missing items in the current user's session when t...
The recommender systems provide users with what they prefer and filter unnecessary information. In t...
Recommender systems are widely used online to help users find other products, items etc that they ma...
Recommender system is a specific type of intelligent systems, which exploits historical user ratings...
To develop a recommender system, the collaborative filtering is the best known approach, which consi...
Most of the recent studies on recommender systems are focused on single domain recommendation system...
International audienceData warehouses store large volumes of consolidated and historized multidimens...
Data warehouses store large volumes of consolidated and historized multidimensional data for analysi...
There is a substantial increase in demand for recommender systems which have applications in a varie...
International audienceThis paper focuses on the new users cold-start issue in the context of recomme...
International audienceHow can we effectively recommend items to a user about whom we have no informa...
Recommender systems model user preferences by exploiting their profiles, historical transactions, an...
Cold start recommendations are important because they help build user loyalty, which is the key to t...
We have developed a method for recommending items that combines content and collaborative data under...
A recommender system (RS) aims to provide personalized recommendations to users for specific items (...
This thesis studies the problem of predicting the missing items in the current user's session when t...
The recommender systems provide users with what they prefer and filter unnecessary information. In t...
Recommender systems are widely used online to help users find other products, items etc that they ma...
Recommender system is a specific type of intelligent systems, which exploits historical user ratings...
To develop a recommender system, the collaborative filtering is the best known approach, which consi...
Most of the recent studies on recommender systems are focused on single domain recommendation system...