Author:
- Arijit Ukil
- Soma Bandyopadhyay
- Arpan Pal
Abstract:
Privacy breaching attacks pose considerable challenges in the development and deployment of Internet of Things (IoT) applications. Though privacy preserving data mining (PPDM) minimizes sensitive data disclosure probability, sensitive content analysis, privacy measurement and user’s privacy awareness issues are yet to be addressed. In this paper, we propose a privacy management scheme that enables the user to estimate the risk of sharing private data like smart meter data. Our focus is to develop robust sensitivity detection, analysis and privacy content quantification scheme from statistical disclosure control aspect and information theoretic model. We depict performance results using real sensor data.
Document:
https://doi.org/10.1109/INFCOMW.2014.6849186
References:
1. Z. Kolter, and M, J. Johnson, “REDD: A public data set for energy disaggregation research,” SustKDD, 2011. Show Context Google Scholar
2. R. Rao, S. Akella, G. Guley, “Power Line Carrier (PLC) Signal Analysis of Smart Meters for Outlier Detection,” IEEE SmartGridComm, pp. 291-296, 2011. Show Context View Article Full Text: PDF (943KB) Google Scholar
3. R. M. Nascimento, et al., “Outliers’ Detection and Filling Algorithms for Smart Metering Centers,” IEEE PES, pp.1-6, 2012. Show Context View Article Full Text: PDF (1020KB) Google Scholar
4. W. Yang, et al., “Minimizing Private Data Disclosures in the Smart Grid,” ACM CCS, pp. 412-427, 2012. Show Context Access at ACM Google Scholar
5. B.Rosner, “Percentage points for a generalized ESD many-outlier procedure,” Technometrics, vol. 25, issue. 2, pp. 165-172, 1983. Show Context CrossRef Google Scholar
6. R. Serfling, and S. Wang, “General Foundations for Studying Masking and Swamping Robustness of Outlier Identifiers,” Elsevier Statistical Methodology, August 2013. Show Context Google Scholar
7. L. Sankar, S.R. Rajagopalan, S. Mohajer, and H.V.Poor, “Smart Meter Privacy: A Theoretical Framework,” IEEE Transactions on Smart Grid, vol. 4, issue. 2, pp. 837-846, 2013. Show Context View Article Full Text: PDF (1472KB) Google Scholar
8. A. Halder, and R.Bhattacharya, “Further results on probabilistic model validation in Wasserstein metric,” IEEE Annual Conference on Decision and Control, pp. 5542-5547, 2012. View Article Full Text: PDF (430KB) Google Scholar