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 computation and payment scheme for several canonical models such as linear regression, logistic regression and Poisson regression: (1) the mechanism is $o(1)$-jointly differentially private (with probability at least $1-o(1)$); (2) it is an $o(\frac{1}{n})$-approximate Bayes Nash equilibrium for a $(1-o(1))$-fraction of agents to truthfully report their data, where $n$ is the number of agents; (3) the output could achieve an error of $o(1)$ to the underlying parameter; (4) it is individually rational for a $(1-o(1))$ fraction of agents in the mechanism ; (5) the payment budget required from the analyst to run the mechanism is $o(1)$. In the second part, we consider the linear regression model under more general setting where both covariates and responses are heavy-tailed and only have finite fourth moments. By using an $\ell_4$-norm shrinkage operator, we propose a private estimator and payment scheme which have similar properties as in the sub-Gaussian case.
翻译:在本文中,我们研究如何估计通用线性模型(GLMS),如果代理人(个人)具有战略性或自我兴趣,并且在报告数据时关心隐私。与古典环境相比,我们的目标是设计一些机制,既能激励大多数代理人真实地报告其数据,又能保护个人报告的隐私,而其产出也应接近基本参数。在本文第一部分,我们考虑的是以下情况,即共差值为(a) Gassuian 子(aussian),而答复则是重整的(a) 美元(a) 。首先,受可能性函数最大化的固定状态驱动,我们产生了一个新的私人和封闭的表状缩缩缩缩缩缩缩缩。基于估算,我们提出了一个机制,通过某些适当的计算和支付计划设计,例如线性回归、物流回归和波斯逊回归:(1) 机制是美元(a) 美元(bregylegy) 美元(a) 和美元(o(1) 美元) 和美元(bregylal 美元) 机制下,它是一个基数(breal) 美元(a) 美元) 美元(axral_1) 美元(a) 美元) 美元(a) 美元(a) 美元) 美元,它可以算算算算算算算算算算为正数为正数为美元(a-al_美元)。