Local Differential Privacy: a tutorial

07/27/2019
by   Björn Bebensee, et al.
0

In the past decade analysis of big data has proven to be extremely valuable in many contexts. Local Differential Privacy (LDP) is a state-of-the-art approach which allows statistical computations while protecting each individual user's privacy. Unlike Differential Privacy no trust in a central authority is necessary as noise is added to user inputs locally. In this paper we give an overview over different LDP algorithms for problems such as locally private heavy hitter identification and spatial data collection. Finally, we will give an outlook on open problems in LDP.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/09/2022

Stronger Privacy Amplification by Shuffling for Rényi and Approximate Differential Privacy

The shuffle model of differential privacy has gained significant interes...
research
11/29/2018

Amplification by Shuffling: From Local to Central Differential Privacy via Anonymity

Sensitive statistics are often collected across sets of users, with repe...
research
10/28/2019

Empirical Differential Privacy

We show how to achieve differential privacy with no or reduced added noi...
research
10/23/2020

Learning to Noise: Application-Agnostic Data Sharing with Local Differential Privacy

In recent years, the collection and sharing of individuals' private data...
research
09/02/2023

A Survey of Local Differential Privacy and Its Variants

The introduction and advancements in Local Differential Privacy (LDP) va...
research
03/30/2021

Frequency Estimation under Local Differential Privacy [Experiments, Analysis and Benchmarks]

Private collection of statistics from a large distributed population is ...
research
10/27/2021

Locally Differentially Private Bayesian Inference

In recent years, local differential privacy (LDP) has emerged as a techn...

Please sign up or login with your details

Forgot password? Click here to reset