Lorenzo Gabrielli
National Research Council
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Lorenzo Gabrielli.
Journal of data science | 2016
Luca Pappalardo; Maarten Vanhoof; Lorenzo Gabrielli; Zbigniew Smoreda; Dino Pedreschi; Fosca Giannotti
An intriguing open question is whether measurements derived from Big Data recording human activities can yield high-fidelity proxies of socio-economic development and well-being. Can we monitor and predict the socio-economic development of a territory just by observing the behavior of its inhabitants through the lens of Big Data? In this paper, we design a data-driven analytical framework that uses mobility measures and social measures extracted from mobile phone data to estimate indicators for socio-economic development and well-being. We discover that the diversity of mobility, defined in terms of entropy of the individual users’ trajectories, exhibits (i) significant correlation with two different socio-economic indicators and (ii) the highest importance in predictive models built to predict the socio-economic indicators. Our analytical framework opens an interesting perspective to study human behavior through the lens of Big Data by means of new statistical indicators that quantify and possibly “nowcast” the well-being and the socio-economic development of a territory.
Journal of Official Statistics | 2015
Stefano Marchetti; Caterina Giusti; Monica Pratesi; Nicola Salvati; Fosca Giannotti; Dino Pedreschi; Salvatore Rinzivillo; Luca Pappalardo; Lorenzo Gabrielli
Abstract The timely, accurate monitoring of social indicators, such as poverty or inequality, on a finegrained spatial and temporal scale is a crucial tool for understanding social phenomena and policymaking, but poses a great challenge to official statistics. This article argues that an interdisciplinary approach, combining the body of statistical research in small area estimation with the body of research in social data mining based on Big Data, can provide novel means to tackle this problem successfully. Big Data derived from the digital crumbs that humans leave behind in their daily activities are in fact providing ever more accurate proxies of social life. Social data mining from these data, coupled with advanced model-based techniques for fine-grained estimates, have the potential to provide a novel microscope through which to view and understand social complexity. This article suggests three ways to use Big Data together with small area estimation techniques, and shows how Big Data has the potential to mirror aspects of well-being and other socioeconomic phenomena.
international conference on big data | 2013
Barbara Furletti; Lorenzo Gabrielli; Chiara Renso; Salvatore Rinzivillo
This information about our GSM calls is stored by the TelCo operator in large volumes and with strict privacy constraints making it challenging the analysis of these fingerprints for inferring mobility behavior. This paper proposes a strategy for mobility behavior identification based on aggregated calling profiles of mobile phone users. This compact representation of the user call profiles is the input of the mining algorithm for automatically classifying various kinds of mobility behavior. A further advantage of having defined the call profiles is that the analysis phase is based on summarized privacy-preserving representation of the original data. We show how these call profiles permit to design a two step process - implemented into a system - based on a bootstrap phase and a running phase for classifying users into behavior categories. We evaluated the system in two case studies where individuals are classified into residents, commuters and visitors. We conclude the paper with a discussion which emphasizes the role of the call profiles for the design of a new collaboration model between data provider and data analyst.
international conference data science | 2014
Salvatore Rinzivillo; Lorenzo Gabrielli; Mirco Nanni; Luca Pappalardo; Dino Pedreschi; Fosca Giannotti
The large availability of mobility data allows us to investigate complex phenomena about human movement. However this adundance of data comes with few information about the purpose of movement. In this work we address the issue of activity recognition by introducing Activity-Based Cascading (ABC) classification. Such approach departs completely from probabilistic approaches for two main reasons. First, it exploits a set of structural features extracted from the Individual Mobility Network (IMN), a model able to capture the salient aspects of individual mobility. Second, it uses a cascading classification as a way to tackle the highly skewed frequency of activity classes. We show that our approach outperforms existing state-of-the-art probabilistic methods. Since it reaches high precision, ABC classification represents a very reliable semantic amplifier for Big Data.
Information-an International Interdisciplinary Journal | 2017
Barbara Furletti; Roberto Trasarti; Paolo Cintia; Lorenzo Gabrielli
The increasing availability of large amounts of data and digital footprints has given rise to ambitious research challenges in many fields, which spans from medical research, financial and commercial world, to people and environmental monitoring. Whereas traditional data sources and census fail in capturing actual and up-to-date behaviors, Big Data integrate the missing knowledge providing useful and hidden information to analysts and decision makers. With this paper, we focus on the identification of city events by analyzing mobile phone data (Call Detail Record), and we study and evaluate the impact of these events over the typical city dynamics. We present an analytical process able to discover, understand and characterize city events from Call Detail Record, designing a distributed computation to implement Sociometer, that is a profiling tool to categorize phone users. The methodology provides an useful tool for city mobility manager to manage the events and taking future decisions on specific classes of users, i.e., residents, commuters and tourists.
Archive | 2014
Barbara Furletti; Lorenzo Gabrielli; Fosca Giannotti; Letizia Milli; Mirco Nanni; Dino Pedreschi; Roberta Vivio; Giuseppe Garofalo
edbt/icdt workshops | 2014
Roberto Trasarti; Barbara Furletti; Lorenzo Gabrielli; Mirco Nanni; Dino Pedreschi
STATISTICS AND DATA SCIENCE: NEW CHALLENGES, NEW GENERATIONS | 2017
Renza Campagni; Lorenzo Gabrielli; Fosca Giannotti; Riccardo Guidotti; Filomena Maggino; Dino Pedreschi
DATA SCIENCE & SOCIAL RESEARCH | 2016
Renza Campagni; Lorenzo Gabrielli; Fosca Giannotti; Riccardo Guidotti; Filomena Maggino; Dino Pedreschi
Conference of European Statistics Stakeholders | 2016
Renza Campagni; Lorenzo Gabrielli; Fosca Giannotti; Filomena Maggino