Truthful Generalized Linear Models
Yuan Qiu, Jinyan Liu, Di Wang

TL;DR
This paper develops privacy-preserving, incentive-compatible mechanisms for estimating generalized linear models with strategic agents, ensuring truthful reporting, privacy, and accurate parameter estimation under heavy-tailed data.
Contribution
It introduces novel private estimators and mechanisms for GLMs that incentivize truthful reporting and preserve privacy with theoretical guarantees under heavy-tailed data.
Findings
Mechanisms are $o(1)$-jointly differentially private.
Achieve $o(1/n)$-approximate Bayes Nash equilibrium.
Output error is $o(1)$ to the true parameter.
Abstract
In this paper we study estimating Generalized Linear Models (GLMs) in the case where the agents (individuals) are strategic or self-interested and they concern about their privacy when reporting data. Compared with the classical setting, here we aim to design mechanisms that can both incentivize most agents to truthfully report their data and preserve the privacy of individuals' reports, while their outputs should also close to the underlying parameter. In the first part of the paper, we consider the case where the covariates are sub-Gaussian and the responses are heavy-tailed where they only have the finite fourth moments. First, motivated by the stationary condition of the maximizer of the likelihood function, we derive a novel private and closed form estimator. Based on the estimator, we propose a mechanism which has the following properties via some appropriate design of the…
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Taxonomy
TopicsStatistical Methods and Bayesian Inference · Statistical Methods and Inference · Advanced Causal Inference Techniques
MethodsLinear Regression · Logistic Regression
