PCOR: Private Contextual Outlier Release via Differentially Private Search

03/09/2021
by   Masoumeh Shafieinejad, et al.
0

Outlier detection plays a significant role in various real world applications such as intrusion, malfunction, and fraud detection. Traditionally, outlier detection techniques are applied to find outliers in the context of the whole dataset. However, this practice neglects contextual outliers, that are not outliers in the whole dataset but in some specific neighborhoods. Contextual outliers are particularly important in data exploration and targeted anomaly explanation and diagnosis. In these scenarios, the data owner computes the following information: i) The attributes that contribute to the abnormality of an outlier (metric), ii) Contextual description of the outlier's neighborhoods (context), and iii) The utility score of the context, e.g. its strength in showing the outlier's significance, or in relation to a particular explanation for the outlier. However, revealing the outlier's context leaks information about the other individuals in the population as well, violating their privacy. We address the issue of population privacy violations in this paper, and propose a solution for the two main challenges. In this setting, the data owner is required to release a valid context for the queried record, i.e. a context in which the record is an outlier. Hence, the first major challenge is that the privacy technique must preserve the validity of the context for each record. We propose techniques to protect the privacy of individuals through a relaxed notion of differential privacy to satisfy this requirement. The second major challenge is applying the proposed techniques efficiently, as they impose intensive computation to the base algorithm. To overcome this challenge, we propose a graph structure to map the contexts to, and introduce differentially private graph search algorithms as efficient solutions for the computation problem caused by differential privacy techniques.

READ FULL TEXT
research
11/16/2019

Robust Anomaly Detection and Backdoor Attack Detection Via Differential Privacy

Outlier detection and novelty detection are two important topics for ano...
research
11/28/2017

Contextual Outlier Interpretation

Outlier detection plays an essential role in many data-driven applicatio...
research
04/16/2021

Achieving differential privacy for k-nearest neighbors based outlier detection by data partitioning

When applying outlier detection in settings where data is sensitive, mec...
research
01/18/2022

An Efficient Hashing-based Ensemble Method for Collaborative Outlier Detection

In collaborative outlier detection, multiple participants exchange their...
research
07/13/2023

Privacy-Utility Trade-offs in Neural Networks for Medical Population Graphs: Insights from Differential Privacy and Graph Structure

We initiate an empirical investigation into differentially private graph...
research
09/14/2020

Utility-Optimized Synthesis of Differentially Private Location Traces

Differentially private location trace synthesis (DPLTS) has recently eme...
research
06/19/2023

Female mosquito detection by means of AI techniques inside release containers in the context of a Sterile Insect Technique program

The Sterile Insect Technique (SIT) is a biological pest control techniqu...

Please sign up or login with your details

Forgot password? Click here to reset