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arxiv: 1803.01261 · v1 · pith:ZQBLL6TMnew · submitted 2018-03-03 · 💻 cs.NI · cs.CR

AntShield: On-Device Detection of Personal Information Exposure

classification 💻 cs.NI cs.CR
keywords informationantshieldon-deviceexposurefirstlearningmonitoringperformance
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Mobile devices have access to personal, potentially sensitive data, and there is a growing number of applications that transmit this personally identifiable information (PII) over the network. In this paper, we present the AntShield system that performs on-device packet-level monitoring and detects the transmission of such sensitive information accurately and in real-time. A key insight is to distinguish PII that is predefined and is easily available on the device from PII that is unknown a priori but can be automatically detected by classifiers. Our system not only combines, for the first time, the advantages of on-device monitoring with the power of learning unknown PII, but also outperforms either of the two approaches alone. We demonstrate the real-time performance of our prototype as well as the classification performance using a dataset that we collect and analyze from scratch (including new findings in terms of leaks and patterns). AntShield is a first step towards enabling distributed learning of private information exposure.

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