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arxiv: 1806.06151 · v2 · pith:72XAJC35new · submitted 2018-06-15 · 💻 cs.DB

Efficient Data Perturbation for Privacy Preserving and Accurate Data Stream Mining

classification 💻 cs.DB
keywords datarocalprivacyefficientmethodsperturbationstreamstreams
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The widespread use of the Internet of Things (IoT) has raised many concerns, including the protection of private information. Existing privacy preservation methods cannot provide a good balance between data utility and privacy, and also have problems with efficiency and scalability. This paper proposes an efficient data stream perturbation method (named as $P^2RoCAl$). $P^2RoCAl$ offers better data utility than similar methods: classification accuracies of $P^2RoCAl$ perturbed data streams are very close to those of the original data streams. $P^2RoCAl$ also provides higher resilience against data reconstruction attacks.

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