While OLAP has a key role in supporting effective exploration of multidimensional cubes, the huge number of aggregations and selections that can be operated on data may make the user experience disorientating. To address this issue, in the paper we propose a recommendation approach stemming from collaborative filtering. We claim that the whole sequence of queries belonging to an OLAP session is valuable because it gives the user a compound and synergic view of data; for this reason, our goal is not to recommend single OLAP queries but OLAP sessions. Like other collaborative approaches, ours features three phases: (i) search the log for sessions that bear some similarity with the one currently being issued by the user; (ii) extract the most ...
In Business Intelligence systems, users interact with data warehouses by formulating OLAP queries ai...
Une session d’analyse OLAP peut être définie comme une session interactive durant laquelle ...
Session-based recommendation is the task of predicting the next item to recommend when the only avai...
While OLAP has a key role in supporting effective exploration of multidimensional cubes, the huge nu...
International audienceWhile OLAP has a key role in supporting effective exploration of multidimensio...
An OLAP analysis session can be defined as an interactive session during which a user launches queri...
International audienceAn OLAP analysis session can be defined as an interactive session during which...
International audienceDEFINITION Personalizing or recommending OLAP queries aims at making the OLAP ...
International audienceInteractive analysis of datacube, in which a user navigates a cube by launchin...
Recommending database queries is an emerging and promising field of research and is of particular in...
Effective recommendation is indispensable to customized or personalized services. The ease of collec...
International audienceIn Business Intelligence systems, users interact with data warehouses by formu...
Collaborative filtering is one of the most used approaches for providing recommendations in various ...
As one of the most successful approaches to building recommender systems, collaborative filtering (C...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
In Business Intelligence systems, users interact with data warehouses by formulating OLAP queries ai...
Une session d’analyse OLAP peut être définie comme une session interactive durant laquelle ...
Session-based recommendation is the task of predicting the next item to recommend when the only avai...
While OLAP has a key role in supporting effective exploration of multidimensional cubes, the huge nu...
International audienceWhile OLAP has a key role in supporting effective exploration of multidimensio...
An OLAP analysis session can be defined as an interactive session during which a user launches queri...
International audienceAn OLAP analysis session can be defined as an interactive session during which...
International audienceDEFINITION Personalizing or recommending OLAP queries aims at making the OLAP ...
International audienceInteractive analysis of datacube, in which a user navigates a cube by launchin...
Recommending database queries is an emerging and promising field of research and is of particular in...
Effective recommendation is indispensable to customized or personalized services. The ease of collec...
International audienceIn Business Intelligence systems, users interact with data warehouses by formu...
Collaborative filtering is one of the most used approaches for providing recommendations in various ...
As one of the most successful approaches to building recommender systems, collaborative filtering (C...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
In Business Intelligence systems, users interact with data warehouses by formulating OLAP queries ai...
Une session d’analyse OLAP peut être définie comme une session interactive durant laquelle ...
Session-based recommendation is the task of predicting the next item to recommend when the only avai...