English

Adaptive Learning a Hidden Hypergraph

Information Theory 2016-07-05 v1 Data Structures and Algorithms math.IT

Abstract

Learning a hidden hypergraph is a natural generalization of the classical group testing problem that consists in detecting unknown hypergraph Hun=H(V,E)H_{un}=H(V,E) by carrying out edge-detecting tests. In the given paper we focus our attention only on a specific family F(t,s,)\mathcal{F}(t,s,\ell) of localized hypergraphs for which the total number of vertices V=t|V| = t, the number of edges Es|E|\le s, sts\ll t, and the cardinality of any edge e|e|\le\ell, t\ell\ll t. Our goal is to identify all edges of HunF(t,s,)H_{un}\in \mathcal{F}(t,s,\ell) by using the minimal number of tests. We provide an adaptive algorithm that matches the information theory bound, i.e., the total number of tests of the algorithm in the worst case is at most slog2t(1+o(1))s\ell\log_2 t(1+o(1)).

Keywords

Cite

@article{arxiv.1607.00507,
  title  = {Adaptive Learning a Hidden Hypergraph},
  author = {A. G. D'yachkov and I. V. Vorobyev and N. A. Polyanskii and V. Yu. Shchukin},
  journal= {arXiv preprint arXiv:1607.00507},
  year   = {2016}
}

Comments

ACCT 2016, 6 pages. arXiv admin note: text overlap with arXiv:1601.06705