There goes Wally: Anonymously sharing your location gives you away

2018 IEEE International Conference on Big Data (Big Data)(2018)

引用 4|浏览110
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摘要
With current technology, a number of entities have access to user mobility traces at different levels of spatio-temporal granularity. At the same time, users frequently reveal their location through different means, including geo-tagged social media posts and mobile app usage. Such leaks are often bound to a pseudonym or a fake identity in an attempt to preserve one's privacy. In this work, we investigate how large-scale mobility traces can de-anonymize anonymous location leaks. By mining the country-wide mobility traces of tens of millions of users, we aim to understand how many location leaks are required to uniquely match a trace, how spatio-temporal obfuscation decreases the matching quality, and how the location popularity and time of the leak influence de-anonymization. We also study the mobility characteristics of those individuals whose anonymous leaks are more prone to identification. Finally, by extending our matching methodology to full traces, we show how large-scale human mobility is highly unique. Our quantitative results have implications for the privacy of users' traces, and may serve as a guideline for future policies regarding the management and publication of mobility data.
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关键词
country-wide mobility mining,users privacy,mobility characteristics,matching quality,spatio-temporal obfuscation,de-anonymize anonymous location leaks,fake identity,mobile app usage,geo-tagged social media posts,spatio-temporal granularity,mobility data
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