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1
Intro
2
NIST DP Synthetic Data Competition
3
Competition Setup
4
Marginal-based mechanisms
5
Why Marginals?
6
Independent Baseline
7
MST Selection Algorithm
8
Bayesian Network vs. Markov Random Field
9
Select the Workload?
10
Interesting Empirical Finding
11
Considerations for Selection
12
Budget-Aware Mechanism
13
Workload-Aware Mechanism
14
Data-Aware Mechanism
15
Efficiency-Aware Mechanism
16
Qualitative Comparison of Prior Work
17
Summary & Open Problems
Description:
Explore marginal-based methods for generating differentially private synthetic data in this 43-minute Google TechTalk presented by Ryan McKenna. Delve into the NIST DP Synthetic Data Competition setup and understand the importance of marginals in data privacy. Learn about various mechanisms including independent baseline, MST selection algorithm, and comparisons between Bayesian Network and Markov Random Field approaches. Discover interesting empirical findings and considerations for selection, as well as budget-aware, workload-aware, data-aware, and efficiency-aware mechanisms. Gain insights into qualitative comparisons of prior work and explore summary and open problems in the field of differential privacy for machine learning.

Marginal-based Methods for Differentially Private Synthetic Data - Differential Privacy for ML Series

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