Lipschitz函数的检验与重构及其在数据隐私中的应用

Madhav Jha, Sofya Raskhodnikova
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引用次数: 83

摘要

函数f: D ?R有Lipschitz常数c,如果dR(f(x),f(y)) = c·dD(x,y),其中dR和dD分别表示f的值域和定义域上的距离函数。如果一个函数有李普希茨常数1,我们就说它是李普希茨函数。(请注意,以1/c的系数重新缩放将具有Lipschitz常数c的函数转换为Lipschitz函数。)换句话说,Lipschitz函数对输入的微小变化不是很敏感。研究了函数的Lipschitz性质的检验和局部重构。属性测试人员必须将具有该属性的函数(在本例中是Lipschitz)与不具有该属性的函数区分开来,也就是说,至少在定义域的e部分上与具有该属性的每个函数不同。局部滤波器重构任意函数f,以确保重构函数g具有所需的性质(在本例中为Lipschitz),仅在必要时改变f。给定一个函数f和一个查询x,在查找了少量点上f的值后,它必须为某个函数g输出g(x),该函数g具有所需的性质并且不依赖于x。如果f具有该性质,则g必须等于f。我们考虑函数在{0,1}d,{1,…, n}和{1,…, n}d,配备l1距离。我们设计了对形式为f:{0,1}d?的函数的Lipschitz性质的有效测试仪。dz,哪里?(0,1), d Z是d的整数倍的集合,其形式为f:{1,…, n} ?R,其中R是(离散的)度量凸。在第一种情况下,测试仪运行时间为O(d·min{d,r}/d e),其中r为f图像的直径,在第二种情况下,运行时间为O((log n)/e)。我们给出了查询复杂度的相应下界O (d)和O (log n)(在第二种情况下,仅适用于非自适应单侧错误测试器)。在{0,1}上的函数的下界对于{0,1,2}范围和常数e的情况是紧的。第一个检验法暗示了对形式为f的函数的算法:{0,1}d?R用来区分李普希茨函数和e -远离(1+d)-李普希茨函数。我们也给出了形式为f:{1,…的函数的Lipschitz性质的局部滤波器, n}d ?R,查找复杂度为O((log n+1)d)对于形式为{0,1}d的函数,我们表明每个非自适应局部滤波器在d中具有查找复杂度指数。我们开发的测试器已应用于程序分析。重构器应用于数据隐私。对于第一个应用,由程序计算的函数的Lipschitz性质对应于对数据噪声的鲁棒性概念。对隐私的应用是基于这样一个事实,即敏感信息数据库中条目的函数f可以释放与Lipschitz常数f成比例的噪声,同时保留其数据存储在数据库中的个人的隐私(Dwork, McSherry, Nissim和Smith, TCC 2006)。当一个不可信的客户端提供了函数f的Lipschitz常数时,我们给出了一个基于局部过滤器的差分私有机制来释放函数f。我们表明,当没有给出可靠的Lipschitz常数f时,先前已知的差分私有机制对于一大类对称函数f具有更高的运行时间或更高的期望误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Testing and Reconstruction of Lipschitz Functions with Applications to Data Privacy
A function f : D ? R has Lipschitz constant c if dR(f(x),f(y)) = c· dD(x,y) for all x,y in D, where dR and dD denote the distance functions on the range and domain of f, respectively. We say a function is Lipschitz if it has Lipschitz constant 1. (Note that rescaling by a factor of 1/c converts a function with a Lipschitz constant c into a Lipschitz function.) In other words, Lipschitz functions are not very sensitive to small changes in the input. We initiate the study of testing and local reconstruction of the Lipschitz property of functions. A property tester has to distinguish functions with the property (in this case, Lipschitz) from functions that are e -far from having the property, that is, differ from every function with the property on at least an e fraction of the domain. A local filter reconstructs an arbitrary function f to ensure that the reconstructed function g has the desired property (in this case, is Lipschitz), changing f only when necessary. A local filter is given a function f and a query x and, after looking up the value of f on a small number of points, it has to output g(x) for some function g, which has the desired property and does not depend on x. If f has the property, g must be equal to f. We consider functions over domains {0,1}d, {1,..., n} and {1,..., n}d, equipped with l1 distance. We design efficient testers of the Lipschitz property for functions of the form f:{0,1}d? d Z, where d ? (0,1] and d Z is the set of integer multiples of d, and of the form f: {1,..., n} ? R, where R is (discretely) metrically convex. In the first case, the tester runs in time O(d· min{d,r}/d e ), where r is the diameter of the image of f, in the second, in time O((log n)/e ). We give corresponding lower bounds of O (d) and O (log n) on the query complexity (in the second case, only for nonadaptive 1-sided error testers). Our lower bound for functions over {0,1}dis tight for the case of the {0,1,2} range and constant e. The first tester implies an algorithm for functions of the form f:{0,1}d? R that distinguishes Lipschitz functions from functions that are e -far from (1+d )-Lipschitz. We also present a local filter of the Lipschitz property for functions of the form f: {1,..., n}d ? R with lookup complexity O((log n+1)d). For functions of the form {0,1}d, we show that every nonadaptive local filter has lookup complexity exponential in d. The testers that we developed have applications to programs analysis. The reconstructors have applications to data privacy. For the first application, the Lipschitz property of the function computed by a program corresponds to a notion of robustness to noise in the data. The application to privacy is based on the fact that a function f of entries in a database of sensitive information can be released with noise of magnitude proportional to a Lipschitz constant of f, while preserving the privacy of individuals whose data is stored in the database (Dwork, McSherry, Nissim and Smith, TCC 2006). We give a differentially private mechanism, based on local filters, for releasing a function f when a Lipschitz constant of f is provided by a distrusted client. We show that when no reliable Lipschitz constant of f is given, previously known differentially private mechanisms either have a substantially higher running time or have a higher expected error for a large class of symmetric functions f.
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