Conference Proceedings
An improved scheme for privacy-preserving collaborative anomaly detection
L Lyu, YW Law, SM Erfani, C Leckie, M Palaniswami
2016 IEEE International Conference on Pervasive Computing and Communication Workshops Percom Workshops 2016 | Published : 2016
Abstract
The ubiquity of mobile sensing devices in the Internet of Things (IoT) enables an emerging data crowdsourcing paradigm called participatory sensing, where multiple individuals collect data and use a cloud service to analyse the union of the collected data. An example of such collaborative analysis is collaborative anomaly detection. Given the possibility that the cloud service is honest but curious, a major challenge is how to protect the participants' privacy. The scheme called Random Multiparty Perturbation (RMP) addresses this challenge by allowing each participant to perturb his/her tabular data by passing the data through a nonlinear function, and projecting the data to a lower dimensio..
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