FakeSafe: Human Level Data Protection by Disinformation Mapping using Cycle-consistent Adversarial Network
November 23, 2020 Β· Declared Dead Β· π Social Science Research Network
"No code URL or promise found in abstract"
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Authors
He Zhu, Dianbo Liu
arXiv ID
2011.11278
Category
cs.AI: Artificial Intelligence
Citations
0
Venue
Social Science Research Network
Last Checked
4 months ago
Abstract
The concept of disinformation is to use fake messages to confuse people in order to protect the real information. This strategy can be adapted into data science to protect valuable private and sensitive data. Huge amount of private data are being generated from personal devices such as smart phone and wearable in recent years. Being able to utilize these personal data will bring big opportunities to design personalized products, conduct precision healthcare and many other tasks that were impossible in the past. However, due to privacy, safety and regulation reasons, it is often difficult to transfer or store data in its original form while keeping them safe. Building a secure data transfer and storage infrastructure to preserving privacy is costly in most cases and there is always a concern of data security due to human errors. In this study, we propose a method, named FakeSafe, to provide human level data protection using generative adversarial network with cycle consistency and conducted experiments using both benchmark and real world data sets to illustrate potential applications of FakeSafe.
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