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Estimating parameters associated with monotone properties

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Author(s):
Hoppen, Carlos ; Kohayakawa, Yoshiharu ; Lang, Richard ; Lefmann, Hanno ; Stagni, Henrique
Total Authors: 5
Document type: Journal article
Source: COMBINATORICS PROBABILITY & COMPUTING; v. 29, n. 4, p. 17-pg., 2020-07-01.
Abstract

There has been substantial interest in estimating the value of a graph parameter, i.e. of a real-valued function defined on the set of finite graphs, by querying a randomly sampled substructure whose size is independent of the size of the input. Graph parameters that may be successfully estimated in this way are said to be testable or estimable, and the sample complexity q(z) = q(z)(epsilon) of an estimable parameter z is the size of a random sample of a graph G required to ensure that the value of z(G) may be estimated within an error of e with probability at least 2/3. In this paper, for any fixed monotone graph property P = Forb(F), we study the sample complexity of estimating a bounded graph parameter z(F) that, for an input graph G, counts the number of spanning subgraphs of G that satisfy P. To improve upon previous upper bounds on the sample complexity, we show that the vertex set of any graph that satisfies a monotone property P may be partitioned equitably into a constant number of classes in such a way that the cluster graph induced by the partition is not far from satisfying a natural weighted graph generalization of P. Properties for which this holds are said to be recoverable, and the study of recoverable properties may be of independent interest. (AU)

FAPESP's process: 17/02263-0 - Property testing and estimation of graph parameters
Grantee:Henrique Stagni
Support Opportunities: Scholarships abroad - Research Internship - Doctorate
FAPESP's process: 15/15986-4 - Asymptotic Combinatorics with Applications in Property Testing and Parameters Estimation.
Grantee:Henrique Stagni
Support Opportunities: Scholarships in Brazil - Doctorate
FAPESP's process: 13/03447-6 - Combinatorial structures, optimization, and algorithms in theoretical Computer Science
Grantee:Carlos Eduardo Ferreira
Support Opportunities: Research Projects - Thematic Grants