With the exponential growth of mobility data generated by IoT, social networks, and mobile devices, there is a pressing need to address privacy concerns. Our work proposes methods to reduce the computation of privacy risk evaluation on mobility datasets, focusing on reducing background knowledge configurations and matching functions, and enhancing code performance. Leveraging the unique characteristics of trajectory data, we aim to minimize the size of combination sets and directly evaluate risk for trajectories with distinct values. Additionally, we optimize efficiency by storing essential information in memory to eliminate unnecessary computations. These approaches offer a more efficient and effective means of identifying and addressing privacy risks associated with diverse mobility datasets.

Efficiency Boosts in Human Mobility Data Privacy Risk Assessment: Advancements within the PRUDEnce Framework

Pellungrini Roberto
;
2024

Abstract

With the exponential growth of mobility data generated by IoT, social networks, and mobile devices, there is a pressing need to address privacy concerns. Our work proposes methods to reduce the computation of privacy risk evaluation on mobility datasets, focusing on reducing background knowledge configurations and matching functions, and enhancing code performance. Leveraging the unique characteristics of trajectory data, we aim to minimize the size of combination sets and directly evaluate risk for trajectories with distinct values. Additionally, we optimize efficiency by storing essential information in memory to eliminate unnecessary computations. These approaches offer a more efficient and effective means of identifying and addressing privacy risks associated with diverse mobility datasets.
2024
Settore INFO-01/A - Informatica
computation improvements; mobility; privacy; privacy risk; privacy risk assessment; re-identification; risk; trajectory
   PNRR Infrastrutture di Ricerca - SoBigData.it - Strengthening the Italian RI for Social Mining and Big Data Analytics.
   SoBigData.it
   Ministero della pubblica istruzione, dell'università e della ricerca
   IR_0000013

   FAIR-Future Artificial Intelligence Research”-Spoke 1 “Human-centered AI”
   FAIR
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11384/157447
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