Privacy-Preserving Synthetic Location Data in the Real World

08/04/2021
by   Teddy Cunningham, et al.
0

Sharing sensitive data is vital in enabling many modern data analysis and machine learning tasks. However, current methods for data release are insufficiently accurate or granular to provide meaningful utility, and they carry a high risk of deanonymization or membership inference attacks. In this paper, we propose a differentially private synthetic data generation solution with a focus on the compelling domain of location data. We present two methods with high practical utility for generating synthetic location data from real locations, both of which protect the existence and true location of each individual in the original dataset. Our first, partitioning-based approach introduces a novel method for privately generating point data using kernel density estimation, in addition to employing private adaptations of classic statistical techniques, such as clustering, for private partitioning. Our second, network-based approach incorporates public geographic information, such as the road network of a city, to constrain the bounds of synthetic data points and hence improve the accuracy of the synthetic data. Both methods satisfy the requirements of differential privacy, while also enabling accurate generation of synthetic data that aims to preserve the distribution of the real locations. We conduct experiments using three large-scale location datasets to show that the proposed solutions generate synthetic location data with high utility and strong similarity to the real datasets. We highlight some practical applications for our work by applying our synthetic data to a range of location analytics queries, and we demonstrate that our synthetic data produces near-identical answers to the same queries compared to when real data is used. Our results show that the proposed approaches are practical solutions for sharing and analyzing sensitive location data privately.

READ FULL TEXT
research
09/30/2021

Private sampling: a noiseless approach for generating differentially private synthetic data

In a world where artificial intelligence and data science become omnipre...
research
04/30/2021

Generalizing the normality: a novel towards different estimation methods for skewed information

Normality is the most often mathematical supposition used in data modeli...
research
01/06/2018

Privacy-Preserving Aggregate Queries for Optimal Location Selection

Today, vast amounts of location data are collected by various service pr...
research
11/23/2022

Utility Assessment of Synthetic Data Generation Methods

Big data analysis poses the dual problem of privacy preservation and uti...
research
05/18/2022

GeoPointGAN: Synthetic Spatial Data with Local Label Differential Privacy

Synthetic data generation is a fundamental task for many data management...
research
01/31/2017

SenseGen: A Deep Learning Architecture for Synthetic Sensor Data Generation

Our ability to synthesize sensory data that preserves specific statistic...
research
02/05/2021

Measuring Utility and Privacy of Synthetic Genomic Data

Genomic data provides researchers with an invaluable source of informati...

Please sign up or login with your details

Forgot password? Click here to reset