Residence and Workplace Recovery: User Privacy Risk in Mobility Data

Author(s):  
Yuchen Qiu ◽  
Yuanyuan Qiao ◽  
Aimin Zhang ◽  
Jie Yang
Author(s):  
Roberto Pellungrini ◽  
Luca Pappalardo ◽  
Francesca Pratesi ◽  
Anna Monreale

Author(s):  
Francesca Naretto ◽  
Roberto Pellungrini ◽  
Anna Monreale ◽  
Franco Maria Nardini ◽  
Mirco Musolesi

Author(s):  
Roberto Pellungrini ◽  
Luca Pappalardo ◽  
Francesca Pratesi ◽  
Anna Monreale

2018 ◽  
Vol 9 (3) ◽  
pp. 1-27 ◽  
Author(s):  
Roberto Pellungrini ◽  
Luca Pappalardo ◽  
Francesca Pratesi ◽  
Anna Monreale

Author(s):  
Marin Vukovic ◽  
Damjan Katusic ◽  
Pavle Skocir ◽  
Dragan Jevtic ◽  
Luka Delonga ◽  
...  

2021 ◽  
Vol 10 (4) ◽  
pp. 224
Author(s):  
Jianxi Yang ◽  
Manoranjan Dash ◽  
Sin G. Teo

As mobile phone technology evolves quickly, people could use mobile phones to conduct business, watch entertainment shows, order food, and many more. These location-based services (LBS) require users’ mobility data (trajectories) in order to provide many useful services. Latent patterns and behavior that are hidden in trajectory data should be extracted and analyzed to improve location-based services including routing, recommendation, urban planning, traffic control, etc. While LBSs offer relevant information to mobile users based on their locations, revealing such areas can pose user privacy violation problems. An efficient privacy preservation algorithm for trajectory data must have two characteristics: utility and privacy, i.e., the anonymized trajectories must have sufficient utility for the LBSs to carry out their services, and privacy must be intact without any compromise. Literature on this topic shows many methods catering to trajectories based on GPS data. In this paper, we propose a privacy preserving method for trajectory data based on Call Detail Record (CDR) information. This is useful as a vast number of people, particularly in underdeveloped and developing places, either do not have GPS-enabled phones or do not use them. We propose a novel framework called Privacy-Preserving Trajectory Publication Framework for CDR (PPTPF) for moving object trajectories to address these concerns. Salient features of PPTPF include: (a) a novel stay-region based anonymization technique that caters to important locations of a user; (b) it is based on Spark, thus it can process and anonymize a significant volume of trajectory data successfully and efficiently without affecting LBSs operations; (c) it is a component-based architecture where each component can be easily extended and modified by different parties.


2020 ◽  
Vol 34 (01) ◽  
pp. 394-402
Author(s):  
Brian Dickinson ◽  
Gourab Ghoshal ◽  
Xerxes Dotiwalla ◽  
Adam Sadilek ◽  
Henry Kautz

Nighttime lights satellite imagery has been used for decades as a uniform, global source of data for studying a wide range of socioeconomic factors. Recently, another more terrestrial source is producing data with similarly uniform global coverage: anonymous and aggregated smart phone location. This data, which measures the movement patterns of people and populations rather than the light they produce, could prove just as valuable in decades to come. In fact, since human mobility is far more directly related to the socioeconomic variables being predicted, it has an even greater potential. Additionally, since cell phone locations can be aggregated in real time while preserving individual user privacy, it will be possible to conduct studies that would previously have been impossible because they require data from the present. Of course, it will take quite some time to establish the new techniques necessary to apply human mobility data to problems traditionally studied with satellite imagery and to conceptualize and develop new real time applications. In this study we demonstrate that it is possible to accelerate this process by inferring artificial nighttime satellite imagery from human mobility data, while maintaining a strong differential privacy guarantee. We also show that these artificial maps can be used to infer socioeconomic variables, often with greater accuracy than using actual satellite imagery. Along the way, we find that the relationship between mobility and light emissions is both nonlinear and varies considerably around the globe. Finally, we show that models based on human mobility can significantly improve our understanding of society at a global scale.


Author(s):  
Francesca Naretto ◽  
Roberto Pellungrini ◽  
Franco Maria Nardini ◽  
Fosca Giannotti

Sign in / Sign up

Export Citation Format

Share Document