Movement data are sensitive, because people’s whereabouts may allow re- identification of individuals in a de-identified database and thus can potentially reveal intimate personal traits, such as religious or sexual preferences. In this paper, we focus on a distributed setting in which movement data from individ- ual vehicles are collected and aggregated by a centralized station. We propose a novel approach to privacy-preserving analytical processing within such a dis- tributed setting, and tackle the problem of obtaining aggregated traffic information while preventing privacy leakage from data collection and aggregation. We study and analyze three different solutions based on the differential privacy model and on sketching techniques for e...
Smart-phones, wearables and mobile devices in general are the sensors of our modern world. Their se...
The importance of human mobility analyses is growing in both research and practice, especially as ap...
We present an overview of privacy preserving data mining, one of the most popular directions in the ...
We propose a novel approach to privacy-preserving analytical processing within a distributed setting...
We propose an approach to preserve privacy in an analytical processing within a distributed setting,...
Movement data are sensitive, because people’s whereabouts may allow re- identification of individual...
Abstract We tackle the problem of obtaining general information about vehicle traffic in a city from...
Privacy is an ever-growing concern in our society and is becoming a fundamental aspect to take into ...
© 2019 Soheila Ghane EzabadiThe evolution of smart devices and sensor-enabled vehicles has brought f...
Information about people's movements and the locations they visit enables a wide number of mobility ...
With the rapid popularization and development of the global positioning systems, location-based serv...
In an age where data is becoming increasingly more valuable as itallows for data analysis and machin...
In the last years we have witnessed a pervasive use of location-aware technologies such as vehicular...
Location data can be extremely useful to study commuting patterns and disruptions, as well as to pre...
In many emerging applications, such as real-time traffic monitoring, financial analysis, sensor netw...
Smart-phones, wearables and mobile devices in general are the sensors of our modern world. Their se...
The importance of human mobility analyses is growing in both research and practice, especially as ap...
We present an overview of privacy preserving data mining, one of the most popular directions in the ...
We propose a novel approach to privacy-preserving analytical processing within a distributed setting...
We propose an approach to preserve privacy in an analytical processing within a distributed setting,...
Movement data are sensitive, because people’s whereabouts may allow re- identification of individual...
Abstract We tackle the problem of obtaining general information about vehicle traffic in a city from...
Privacy is an ever-growing concern in our society and is becoming a fundamental aspect to take into ...
© 2019 Soheila Ghane EzabadiThe evolution of smart devices and sensor-enabled vehicles has brought f...
Information about people's movements and the locations they visit enables a wide number of mobility ...
With the rapid popularization and development of the global positioning systems, location-based serv...
In an age where data is becoming increasingly more valuable as itallows for data analysis and machin...
In the last years we have witnessed a pervasive use of location-aware technologies such as vehicular...
Location data can be extremely useful to study commuting patterns and disruptions, as well as to pre...
In many emerging applications, such as real-time traffic monitoring, financial analysis, sensor netw...
Smart-phones, wearables and mobile devices in general are the sensors of our modern world. Their se...
The importance of human mobility analyses is growing in both research and practice, especially as ap...
We present an overview of privacy preserving data mining, one of the most popular directions in the ...