DPOAD: Differentially Private Outsourcing of Anomaly Detection through Iterative Sensitivity Learning

06/27/2022
by   Meisam Mohammady, et al.
0

Outsourcing anomaly detection to third-parties can allow data owners to overcome resource constraints (e.g., in lightweight IoT devices), facilitate collaborative analysis (e.g., under distributed or multi-party scenarios), and benefit from lower costs and specialized expertise (e.g., of Managed Security Service Providers). Despite such benefits, a data owner may feel reluctant to outsource anomaly detection without sufficient privacy protection. To that end, most existing privacy solutions would face a novel challenge, i.e., preserving privacy usually requires the difference between data entries to be eliminated or reduced, whereas anomaly detection critically depends on that difference. Such a conflict is recently resolved under a local analysis setting with trusted analysts (where no outsourcing is involved) through moving the focus of differential privacy (DP) guarantee from "all" to only "benign" entries. In this paper, we observe that such an approach is not directly applicable to the outsourcing setting, because data owners do not know which entries are "benign" prior to outsourcing, and hence cannot selectively apply DP on data entries. Therefore, we propose a novel iterative solution for the data owner to gradually "disentangle" the anomalous entries from the benign ones such that the third-party analyst can produce accurate anomaly results with sufficient DP guarantee. We design and implement our Differentially Private Outsourcing of Anomaly Detection (DPOAD) framework, and demonstrate its benefits over baseline Laplace and PainFree mechanisms through experiments with real data from different application domains.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/03/2017

Differentially Private Bayesian Learning on Distributed Data

Many applications of machine learning, for example in health care, would...
research
01/07/2023

k-Means SubClustering: A Differentially Private Algorithm with Improved Clustering Quality

In today's data-driven world, the sensitivity of information has been a ...
research
09/21/2021

Privacy, Security, and Utility Analysis of Differentially Private CPES Data

Differential privacy (DP) has been widely used to protect the privacy of...
research
09/11/2020

Intertwining Order Preserving Encryption and Differential Privacy

Ciphertexts of an order-preserving encryption (OPE) scheme preserve the ...
research
04/14/2022

Detecting Anomalous LAN Activities under Differential Privacy

Anomaly detection has emerged as a popular technique for detecting malic...
research
10/20/2021

Differential Privacy in Multi-Party Resource Sharing

This study examines a resource-sharing problem involving multiple partie...
research
11/21/2022

Immersion and Invariance-based Coding for Privacy in Remote Anomaly Detection

We present a framework for the design of coding mechanisms that allow re...

Please sign up or login with your details

Forgot password? Click here to reset