Fast Private Kernel Density Estimation via Locality Sensitive Quantization

07/04/2023
by   Tal Wagner, et al.
0

We study efficient mechanisms for differentially private kernel density estimation (DP-KDE). Prior work for the Gaussian kernel described algorithms that run in time exponential in the number of dimensions d. This paper breaks the exponential barrier, and shows how the KDE can privately be approximated in time linear in d, making it feasible for high-dimensional data. We also present improved bounds for low-dimensional data. Our results are obtained through a general framework, which we term Locality Sensitive Quantization (LSQ), for constructing private KDE mechanisms where existing KDE approximation techniques can be applied. It lets us leverage several efficient non-private KDE methods – like Random Fourier Features, the Fast Gauss Transform, and Locality Sensitive Hashing – and “privatize” them in a black-box manner. Our experiments demonstrate that our resulting DP-KDE mechanisms are fast and accurate on large datasets in both high and low dimensions.

READ FULL TEXT
research
06/16/2020

A One-Pass Private Sketch for Most Machine Learning Tasks

Differential privacy (DP) is a compelling privacy definition that explai...
research
08/02/2022

Fast Kernel Density Estimation with Density Matrices and Random Fourier Features

Kernel density estimation (KDE) is one of the most widely used nonparame...
research
02/26/2020

Differentially Private Mean Embeddings with Random Features (DP-MERF) for Simple Practical Synthetic Data Generation

We present a differentially private data generation paradigm using rando...
research
04/15/2020

Unifying Privacy Loss Composition for Data Analytics

Differential privacy (DP) provides rigorous privacy guarantees on indivi...
research
09/30/2022

Differentially Private Optimization on Large Model at Small Cost

Differentially private (DP) optimization is the standard paradigm to lea...
research
06/07/2023

Fast Optimal Locally Private Mean Estimation via Random Projections

We study the problem of locally private mean estimation of high-dimensio...
research
06/27/2012

Faster Gaussian Summation: Theory and Experiment

We provide faster algorithms for the problem of Gaussian summation, whic...

Please sign up or login with your details

Forgot password? Click here to reset