NetDPSyn: Synthesizing Network Traces under Differential Privacy
September 08, 2024 Β· Declared Dead Β· π ACM/SIGCOMM Internet Measurement Conference
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Authors
Danyu Sun, Joann Qiongna Chen, Chen Gong, Tianhao Wang, Zhou Li
arXiv ID
2409.05249
Category
cs.CR: Cryptography & Security
Cross-listed
cs.DB,
cs.NI
Citations
6
Venue
ACM/SIGCOMM Internet Measurement Conference
Last Checked
3 months ago
Abstract
As the utilization of network traces for the network measurement research becomes increasingly prevalent, concerns regarding privacy leakage from network traces have garnered the public's attention. To safeguard network traces, researchers have proposed the trace synthesis that retains the essential properties of the raw data. However, previous works also show that synthesis traces with generative models are vulnerable under linkage attacks. This paper introduces NetDPSyn, the first system to synthesize high-fidelity network traces under privacy guarantees. NetDPSyn is built with the Differential Privacy (DP) framework as its core, which is significantly different from prior works that apply DP when training the generative model. The experiments conducted on three flow and two packet datasets indicate that NetDPSyn achieves much better data utility in downstream tasks like anomaly detection. NetDPSyn is also 2.5 times faster than the other methods on average in data synthesis.
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