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Privacy-Preserving Synthetic Data Generation Method for IoT-Sensor Network IDS Using CTGAN
by
Son, Yunsik
, Kim, Young-Tak
, Alabdulwahab, Saleh
in
Analysis
/ Artificial intelligence
/ Comparative analysis
/ data utility
/ Datasets
/ Deep learning
/ differential privacy
/ Electronic data processing
/ generative adversarial network
/ Internet of things
/ intrusion detection systems
/ Methods
/ Neural networks
/ Privacy
/ Safety and security measures
/ Security software
/ Statistical analysis
/ Technology application
/ Wireless sensor networks
2024
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Privacy-Preserving Synthetic Data Generation Method for IoT-Sensor Network IDS Using CTGAN
by
Son, Yunsik
, Kim, Young-Tak
, Alabdulwahab, Saleh
in
Analysis
/ Artificial intelligence
/ Comparative analysis
/ data utility
/ Datasets
/ Deep learning
/ differential privacy
/ Electronic data processing
/ generative adversarial network
/ Internet of things
/ intrusion detection systems
/ Methods
/ Neural networks
/ Privacy
/ Safety and security measures
/ Security software
/ Statistical analysis
/ Technology application
/ Wireless sensor networks
2024
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Privacy-Preserving Synthetic Data Generation Method for IoT-Sensor Network IDS Using CTGAN
by
Son, Yunsik
, Kim, Young-Tak
, Alabdulwahab, Saleh
in
Analysis
/ Artificial intelligence
/ Comparative analysis
/ data utility
/ Datasets
/ Deep learning
/ differential privacy
/ Electronic data processing
/ generative adversarial network
/ Internet of things
/ intrusion detection systems
/ Methods
/ Neural networks
/ Privacy
/ Safety and security measures
/ Security software
/ Statistical analysis
/ Technology application
/ Wireless sensor networks
2024
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Privacy-Preserving Synthetic Data Generation Method for IoT-Sensor Network IDS Using CTGAN
Journal Article
Privacy-Preserving Synthetic Data Generation Method for IoT-Sensor Network IDS Using CTGAN
2024
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Overview
The increased usage of IoT networks brings about new privacy risks, especially when intrusion detection systems (IDSs) rely on large datasets for machine learning (ML) tasks and depend on third parties for storing and training the ML-based IDS. This study proposes a privacy-preserving synthetic data generation method using a conditional tabular generative adversarial network (CTGAN) aimed at maintaining the utility of IoT sensor network data for IDS while safeguarding privacy. We integrate differential privacy (DP) with CTGAN by employing controlled noise injection to mitigate privacy risks. The technique involves dynamic distribution adjustment and quantile matching to balance the utility–privacy tradeoff. The results indicate a significant improvement in data utility compared to the standard DP method, achieving a KS test score of 0.80 while minimizing privacy risks such as singling out, linkability, and inference attacks. This approach ensures that synthetic datasets can support intrusion detection without exposing sensitive information.
Publisher
MDPI AG,MDPI
Subject
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