Simulation-based, Finite-sample Inference for Privatized Data
- URL: http://arxiv.org/abs/2303.05328v7
- Date: Wed, 06 Nov 2024 13:58:01 GMT
- Title: Simulation-based, Finite-sample Inference for Privatized Data
- Authors: Jordan Awan, Zhanyu Wang,
- Abstract summary: We propose a simulation-based "repro sample" approach to produce statistically valid confidence intervals and hypothesis tests.
We show that this methodology is applicable to a wide variety of private inference problems.
- Score: 14.218697973204065
- License:
- Abstract: Privacy protection methods, such as differentially private mechanisms, introduce noise into resulting statistics which often produces complex and intractable sampling distributions. In this paper, we propose a simulation-based "repro sample" approach to produce statistically valid confidence intervals and hypothesis tests, which builds on the work of Xie and Wang (2022). We show that this methodology is applicable to a wide variety of private inference problems, appropriately accounts for biases introduced by privacy mechanisms (such as by clamping), and improves over other state-of-the-art inference methods such as the parametric bootstrap in terms of the coverage and type I error of the private inference. We also develop significant improvements and extensions for the repro sample methodology for general models (not necessarily related to privacy), including 1) modifying the procedure to ensure guaranteed coverage and type I errors, even accounting for Monte Carlo error, and 2) proposing efficient numerical algorithms to implement the confidence intervals and $p$-values.
Related papers
- Probabilistic Conformal Prediction with Approximate Conditional Validity [81.30551968980143]
We develop a new method for generating prediction sets that combines the flexibility of conformal methods with an estimate of the conditional distribution.
Our method consistently outperforms existing approaches in terms of conditional coverage.
arXiv Detail & Related papers (2024-07-01T20:44:48Z) - Likelihood Ratio Confidence Sets for Sequential Decision Making [51.66638486226482]
We revisit the likelihood-based inference principle and propose to use likelihood ratios to construct valid confidence sequences.
Our method is especially suitable for problems with well-specified likelihoods.
We show how to provably choose the best sequence of estimators and shed light on connections to online convex optimization.
arXiv Detail & Related papers (2023-11-08T00:10:21Z) - Conditional Density Estimations from Privacy-Protected Data [0.0]
We propose simulation-based inference methods from privacy-protected datasets.
We illustrate our methods on discrete time-series data under an infectious disease model and with ordinary linear regression models.
arXiv Detail & Related papers (2023-10-19T14:34:17Z) - Differentially Private Linear Regression with Linked Data [3.9325957466009203]
Differential privacy, a mathematical notion from computer science, is a rising tool offering robust privacy guarantees.
Recent work focuses on developing differentially private versions of individual statistical and machine learning tasks.
We present two differentially private algorithms for linear regression with linked data.
arXiv Detail & Related papers (2023-08-01T21:00:19Z) - Differentially Private Statistical Inference through $\beta$-Divergence
One Posterior Sampling [2.8544822698499255]
We propose a posterior sampling scheme from a generalised posterior targeting the minimisation of the $beta$-divergence between the model and the data generating process.
This provides private estimation that is generally applicable without requiring changes to the underlying model.
We show that $beta$D-Bayes produces more precise inference estimation for the same privacy guarantees.
arXiv Detail & Related papers (2023-07-11T12:00:15Z) - Tight Auditing of Differentially Private Machine Learning [77.38590306275877]
For private machine learning, existing auditing mechanisms are tight.
They only give tight estimates under implausible worst-case assumptions.
We design an improved auditing scheme that yields tight privacy estimates for natural (not adversarially crafted) datasets.
arXiv Detail & Related papers (2023-02-15T21:40:33Z) - A Prototype-Oriented Framework for Unsupervised Domain Adaptation [52.25537670028037]
We provide a memory and computation-efficient probabilistic framework to extract class prototypes and align the target features with them.
We demonstrate the general applicability of our method on a wide range of scenarios, including single-source, multi-source, class-imbalance, and source-private domain adaptation.
arXiv Detail & Related papers (2021-10-22T19:23:22Z) - Non-parametric Differentially Private Confidence Intervals for the
Median [3.205141100055992]
This paper proposes and evaluates several strategies to compute valid differentially private confidence intervals for the median.
We also illustrate that addressing both sources of uncertainty--the error from sampling and the error from protecting the output--should be preferred over simpler approaches that incorporate the uncertainty in a sequential fashion.
arXiv Detail & Related papers (2021-06-18T19:45:37Z) - Differentially private inference via noisy optimization [3.015622397986615]
We show that robust statistics can be used in conjunction with noisy gradient descent or noisy Newton methods to obtain optimal private estimators.
We demonstrate the effectiveness of a bias correction that leads to enhanced small-sample empirical performance in simulations.
arXiv Detail & Related papers (2021-03-19T19:55:55Z) - Private Prediction Sets [72.75711776601973]
Machine learning systems need reliable uncertainty quantification and protection of individuals' privacy.
We present a framework that treats these two desiderata jointly.
We evaluate the method on large-scale computer vision datasets.
arXiv Detail & Related papers (2021-02-11T18:59:11Z) - Trust but Verify: Assigning Prediction Credibility by Counterfactual
Constrained Learning [123.3472310767721]
Prediction credibility measures are fundamental in statistics and machine learning.
These measures should account for the wide variety of models used in practice.
The framework developed in this work expresses the credibility as a risk-fit trade-off.
arXiv Detail & Related papers (2020-11-24T19:52:38Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.