13,009 research outputs found

    Optimal Query Complexity for Reconstructing Hypergraphs

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    In this paper we consider the problem of reconstructing a hidden weighted hypergraph of constant rank using additive queries. We prove the following: Let GG be a weighted hidden hypergraph of constant rank with n vertices and mm hyperedges. For any mm there exists a non-adaptive algorithm that finds the edges of the graph and their weights using O(mlog⁑nlog⁑m) O(\frac{m\log n}{\log m}) additive queries. This solves the open problem in [S. Choi, J. H. Kim. Optimal Query Complexity Bounds for Finding Graphs. {\em STOC}, 749--758,~2008]. When the weights of the hypergraph are integers that are less than O(poly(nd/m))O(poly(n^d/m)) where dd is the rank of the hypergraph (and therefore for unweighted hypergraphs) there exists a non-adaptive algorithm that finds the edges of the graph and their weights using O(mlog⁑ndmlog⁑m). O(\frac{m\log \frac{n^d}{m}}{\log m}). additive queries. Using the information theoretic bound the above query complexities are tight

    On Multistage Learning a Hidden Hypergraph

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    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,β„“)F(t,s,\ell) of localized hypergraphs for which the total number of vertices ∣V∣=t|V| = t, the number of edges ∣Eβˆ£β‰€s|E|\le s, sβ‰ͺts\ll t, and the cardinality of any edge ∣eβˆ£β‰€β„“|e|\le\ell, β„“β‰ͺt\ell\ll t. Our goal is to identify all edges of Hun∈F(t,s,β„“)H_{un}\in F(t,s,\ell) by using the minimal number of tests. We develop 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 sβ„“log⁑2t(1+o(1))s\ell\log_2 t(1+o(1)). We also discuss a probabilistic generalization of the problem.Comment: 5 pages, IEEE conferenc

    Non-adaptive Group Testing on Graphs

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    Grebinski and Kucherov (1998) and Alon et al. (2004-2005) study the problem of learning a hidden graph for some especial cases, such as hamiltonian cycle, cliques, stars, and matchings. This problem is motivated by problems in chemical reactions, molecular biology and genome sequencing. In this paper, we present a generalization of this problem. Precisely, we consider a graph G and a subgraph H of G and we assume that G contains exactly one defective subgraph isomorphic to H. The goal is to find the defective subgraph by testing whether an induced subgraph contains an edge of the defective subgraph, with the minimum number of tests. We present an upper bound for the number of tests to find the defective subgraph by using the symmetric and high probability variation of Lov\'asz Local Lemma
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