TY - CONF T1 - Detecting and understanding big events in big cities T2 - NetMob Y1 - 2015 A1 - Barbara Furletti A1 - Lorenzo Gabrielli A1 - Roberto Trasarti A1 - Zbigniew Smoreda A1 - Maarten Vanhoof A1 - Cezary Ziemlicki AB - Recent studies have shown the great potential of big data such as mobile phone location data to model human behavior. Big data allow to analyze people presence in a territory in a fast and effective way with respect to the classical surveys (diaries or questionnaires). One of the drawbacks of these collection systems is incompleteness of the users' traces; people are localized only when they are using their phones. In this work we define a data mining method for identifying people presence and understanding the impact of big events in big cities. We exploit the ability of the Sociometer for classifying mobile phone users in mobility categories through their presence profile. The experiment in cooperation with Orange Telecom has been conduced in Paris during the event F^ete de la Musique using a privacy preserving protocol. JF - NetMob CY - Boston UR - http://www.netmob.org/assets/img/netmob15_book_of_abstracts_posters.pdf ER - TY - JOUR T1 - Discovering urban and country dynamics from mobile phone data with spatial correlation patterns JF - Telecommunications Policy Y1 - 2014 A1 - Roberto Trasarti A1 - Ana-Maria Olteanu-Raimond A1 - Mirco Nanni A1 - Thomas Couronné A1 - Barbara Furletti A1 - Fosca Giannotti A1 - Zbigniew Smoreda A1 - Cezary Ziemlicki KW - Urban dynamics AB - Abstract Mobile communication technologies pervade our society and existing wireless networks are able to sense the movement of people, generating large volumes of data related to human activities, such as mobile phone call records. At the present, this kind of data is collected and stored by telecom operators infrastructures mainly for billing reasons, yet it represents a major source of information in the study of human mobility. In this paper, we propose an analytical process aimed at extracting interconnections between different areas of the city that emerge from highly correlated temporal variations of population local densities. To accomplish this objective, we propose a process based on two analytical tools: (i) a method to estimate the presence of people in different geographical areas; and (ii) a method to extract time- and space-constrained sequential patterns capable to capture correlations among geographical areas in terms of significant co-variations of the estimated presence. The methods are presented and combined in order to deal with two real scenarios of different spatial scale: the Paris Region and the whole France. UR - http://www.sciencedirect.com/science/article/pii/S0308596113002012 ER -