Afrose, SharminYao, Danfeng (Daphne)Kotevska, Olivera2022-03-032022-03-032021-01-019781665401845http://hdl.handle.net/10919/109016Various Internet of Things (IoT) devices generate complex, dynamically changed, and infinite data streams. Adversaries can cause harm if they can access the user's sensitive raw streaming data. For this reason, protecting the privacy of the data streams is crucial. In this paper, we explore local differential privacy techniques for streaming data. We compare the techniques and report the advantages and limitations. We also present the effect on component (e.g., smoother, perturber) variations of distribution-based local differential privacy. We find that combining distribution-based noise during perturbation provides more flexibility to the interested entity.Pages 1-10application/pdfenPublic DomainMeasurement of Local Differential Privacy Techniques for IoT-based Streaming DataConference proceeding2022-03-032021 18th International Conference on Privacy, Security and Trust, PST 2021https://doi.org/10.1109/PST52912.2021.9647839Yao, Danfeng [0000-0001-8969-2792]