A Parallel Algorithm For Anonymizing Large-Scale Trajectory Data | |
---|---|
Author | |
Keywords | |
Abstract |
With the proliferation of location-based services enabled by a large number of mobile devices and applications, the quantity of location data, such as trajectories collected by service providers, is gigantic. If these datasets could be published, then they would be valuable assets to various service providers to explore business opportunities, to study commuter behavior for better transport management, which in turn benefits the general public for day-to-day commuting. However, there are two major concerns that considerably limit the availability and the usage of these trajectory datasets.
|
Year of Publication |
2020
|
Journal |
ACM/IMS Trans. Data Sci.
|
Volume |
1
|
Date Published |
03/2020
|
ISSN Number |
2691-1922
|
URL |
https://doi.org/10.1145/3368639
|
DOI |
10.1145/3368639
|
Google Scholar | BibTeX | XML | DOI |