Generative Models of Huge Objects

02/24/2023
by   Lunjia Hu, et al.
0

This work initiates the systematic study of explicit distributions that are indistinguishable from a single exponential-size combinatorial object. In this we extend the work of Goldreich, Goldwasser and Nussboim (SICOMP 2010) that focused on the implementation of huge objects that are indistinguishable from the uniform distribution, satisfying some global properties (which they coined truthfulness). Indistinguishability from a single object is motivated by the study of generative models in learning theory and regularity lemmas in graph theory. Problems that are well understood in the setting of pseudorandomness present significant challenges and at times are impossible when considering generative models of huge objects. We demonstrate the versatility of this study by providing a learning algorithm for huge indistinguishable objects in several natural settings including: dense functions and graphs with a truthfulness requirement on the number of ones in the function or edges in the graphs, and a version of the weak regularity lemma for sparse graphs that satisfy some global properties. These and other results generalize basic pseudorandom objects as well as notions introduced in algorithmic fairness. The results rely on notions and techniques from a variety of areas including learning theory, complexity theory, cryptography, and game theory.

READ FULL TEXT
research
01/26/2023

AlignGraph: A Group of Generative Models for Graphs

It is challenging for generative models to learn a distribution over gra...
research
03/10/2022

On the computational properties of basic mathematical notions

We investigate the computational properties of basic mathematical notion...
research
05/28/2021

Measuring global properties of neural generative model outputs via generating mathematical objects

We train deep generative models on datasets of reflexive polytopes. This...
research
06/27/2022

Definable and Non-definable Notions of Structure

Definability is a key notion in the theory of Grothendieck fibrations th...
research
01/23/2021

Generating a Doppelganger Graph: Resembling but Distinct

Deep generative models, since their inception, have become increasingly ...
research
10/19/2019

Semantic Limits of Dense Combinatorial Objects

The theory of limits of discrete combinatorial objects has been thriving...
research
01/02/2020

Algorithmic Number On the Forehead Protocols Yielding Dense Ruzsa-Szemerédi Graphs and Hypergraphs

We describe algorithmic Number On the Forehead protocols that provide de...

Please sign up or login with your details

Forgot password? Click here to reset