Local Lipschitz Filters for Bounded-Range Functions

08/28/2023
by   Jane Lange, et al.
0

We study local filters for the Lipschitz property of real-valued functions f: V → [0,r], where the Lipschitz property is defined with respect to an arbitrary undirected graph G=(V,E). We give nearly optimal local Lipschitz filters both with respect to ℓ_1 distance and ℓ_0 distance. Previous work only considered unbounded-range functions over [n]^d. Jha and Raskhodnikova (SICOMP `13) gave an algorithm for such functions with lookup complexity exponential in d, which Awasthi et al. (ACM Trans. Comput. Theory) showed was necessary in this setting. By considering the natural class of functions whose range is bounded in [0,r], we circumvent this lower bound and achieve running time (d^rlog n)^O(log r) for the ℓ_1-respecting filter and d^O(r)polylog n for the ℓ_0-respecting filter for functions over [n]^d. Furthermore, we show that our algorithms are nearly optimal in terms of the dependence on r for the domain {0,1}^d, an important special case of the domain [n]^d. In addition, our lower bound resolves an open question of Awasthi et al., removing one of the conditions necessary for their lower bound for general range. We prove our lower bound via a reduction from distribution-free Lipschitz testing. Finally, we provide two applications of our local filters. First, they can be used in conjunction with the Laplace mechanism for differential privacy to provide filter mechanisms for privately releasing outputs of black box functions even in the presence of malicious clients. Second, we use them to obtain the first tolerant testers for the Lipschitz property.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/26/2018

Adaptive Lower Bound for Testing Monotonicity on the Line

In the property testing model, the task is to distinguish objects posses...
research
11/10/2022

Controlling Moments with Kernel Stein Discrepancies

Quantifying the deviation of a probability distribution is challenging w...
research
08/15/2016

Generalization of ERM in Stochastic Convex Optimization: The Dimension Strikes Back

In stochastic convex optimization the goal is to minimize a convex funct...
research
07/08/2021

Lower Bounds for the Query Complexity of Equilibria in Lipschitz Games

Nearly a decade ago, Azrieli and Shmaya introduced the class of λ-Lipsch...
research
03/01/2022

Private Convex Optimization via Exponential Mechanism

In this paper, we study private optimization problems for non-smooth con...
research
04/15/2021

Lipschitz Selectors may not Yield Competitive Algorithms for Convex Body Chasing

The current best algorithms for convex body chasing problem in online al...
research
04/22/2008

Natural pseudo-distance and optimal matching between reduced size functions

This paper studies the properties of a new lower bound for the natural p...

Please sign up or login with your details

Forgot password? Click here to reset