Towards “One-Shot” Privacy Auditing and Estimation

Published on ● Video Link: https://www.youtube.com/watch?v=Xtob_vlxx3I



Duration: 37:10
213 views
4


Peter Kairouz (Google)
https://simons.berkeley.edu/talks/peter-kairouz-google-2023-05-23
Information-Theoretic Methods for Trustworthy Machine Learning




Other Videos By Simons Institute for the Theory of Computing


2023-05-26Memorization in Machine Learning
2023-05-26Distribution estimation with user-level privacy and communication constraints
2023-05-25KEYNOTE: Information Constrained Optimal Transport
2023-05-25Privacy and Fairness in Collaborative AI
2023-05-25The Limits of Group Fairness and Predictive Multiplicity
2023-05-25Decision making with information-theoretic constraints
2023-05-25Information Thresholds in Structure Estimation
2023-05-25Fair, Explainable, and Lawful Machine Learning for High-Stakes Applications
2023-05-24KEYNOTE: Variational Formulations and Distributed Convex Optimization Methods for...
2023-05-24Improving Accuracy-Privacy Tradeoff via Model Reprogramming
2023-05-24Towards “One-Shot” Privacy Auditing and Estimation
2023-05-24The Saddle-Point Accountant for Differential Privacy
2023-05-24Contraction of Markov Kernels and Differential Privacy (PART II)
2023-05-24Contraction of Markov kernels and differential privacy (PART I)
2023-05-23KEYNOTE: Differential Privacy & Variants
2023-05-23Information-theoretic Foundations of Generative Adversarial Models: ...
2023-05-23Generalization bounds for Neural Network Based Decoders
2023-05-23Optimal Neural Network Compressors and the Manifold Hypothesis
2023-05-23Fairness without Imputation: A Decision Tree Approach for Fair Prediction with Missing Values
2023-05-23Secure Distributed Matrix Multiplication
2023-05-23On the Robustness to Misspecification of α-Posteriors and Their Variational Approximations



Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
Information-Theoretic Methods for Trustworthy Machine Learning
Peter Kairouz