Mining frequent patterns is an essential task in discovering hidden correlations in datasets. Although frequent patterns unveil valuable information, there are some challenges which limits their usability. First, the number of possible patterns is often very large which hinders their effective exploration. Second, patterns with many items are hard to read and the analyst may be unable to understand their meaning. In ad-dition, the only available information about patterns is their support, a very coarse piece of information. In this paper, we are particularly interested in mining datasets that reflect usage patterns of users moving in space and time and for whom demographics attributes are available (age, occupa-tion, etc). Such characteris...
In this thesis, we propose novel approaches to derive useful grouping information from a movement da...
[[abstract]]Mobile computing systems usually express a user movement trajectory as a sequence of are...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
http://ceur-ws.org/Vol-1075/ - ISSN: 1613-0073International audienceMining frequent patterns is an e...
Smartphones can collect considerable context data about the user, ranging from apps used to places v...
Mobile phones are becoming more and more widely used nowadays, and people do not use the phone only ...
Today, we have the freedom to install and use all kinds of applications on smartphones, thanks to th...
A large volume of research in ubiquitous systems has been devoted to using data, that has been sense...
Data mining, or knowledge discovery in databases, aims at finding useful regularities in large data ...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
While data mining techniques such as frequent itemset and sequence mining are well established as po...
Abstract — Mobile users can appeal services through their mobile devices via Information Service and...
Understanding the patterns underlying human mobility is of an essential importance to applications l...
International audienceExisting Web usage mining techniques are currently based on an arbitrary divis...
International audienceData mining techniques can extract useful activity and travel information from...
In this thesis, we propose novel approaches to derive useful grouping information from a movement da...
[[abstract]]Mobile computing systems usually express a user movement trajectory as a sequence of are...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...
http://ceur-ws.org/Vol-1075/ - ISSN: 1613-0073International audienceMining frequent patterns is an e...
Smartphones can collect considerable context data about the user, ranging from apps used to places v...
Mobile phones are becoming more and more widely used nowadays, and people do not use the phone only ...
Today, we have the freedom to install and use all kinds of applications on smartphones, thanks to th...
A large volume of research in ubiquitous systems has been devoted to using data, that has been sense...
Data mining, or knowledge discovery in databases, aims at finding useful regularities in large data ...
In this work, we discover the daily location-driven routines that are contained in a massive real-li...
While data mining techniques such as frequent itemset and sequence mining are well established as po...
Abstract — Mobile users can appeal services through their mobile devices via Information Service and...
Understanding the patterns underlying human mobility is of an essential importance to applications l...
International audienceExisting Web usage mining techniques are currently based on an arbitrary divis...
International audienceData mining techniques can extract useful activity and travel information from...
In this thesis, we propose novel approaches to derive useful grouping information from a movement da...
[[abstract]]Mobile computing systems usually express a user movement trajectory as a sequence of are...
As we live our daily lives, our surroundings know about it. Our surroundings consist of people, but ...