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Learning Erdős-Rényi Random Graphs via Edge Detecting Queries

9 May 2019
Zihan Li
Matthias Fresacher
Jonathan Scarlett
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Abstract

In this paper, we consider the problem of learning an unknown graph via queries on groups of nodes, with the result indicating whether or not at least one edge is present among those nodes. While learning arbitrary graphs with nnn nodes and kkk edges is known to be hard in the sense of requiring Ω(min⁡{k2log⁡n,n2})\Omega( \min\{ k^2 \log n, n^2\})Ω(min{k2logn,n2}) tests (even when a small probability of error is allowed), we show that learning an Erd\H{o}s-R\ényi random graph with an average of kˉ\bar{k}kˉ edges is much easier; namely, one can attain asymptotically vanishing error probability with only O(kˉlog⁡n)O(\bar{k}\log n)O(kˉlogn) tests. We establish such bounds for a variety of algorithms inspired by the group testing problem, with explicit constant factors indicating a near-optimal number of tests, and in some cases asymptotic optimality including constant factors. In addition, we present an alternative design that permits a near-optimal sublinear decoding time of O(kˉlog⁡2kˉ+kˉlog⁡n)O(\bar{k} \log^2 \bar{k} + \bar{k} \log n)O(kˉlog2kˉ+kˉlogn).

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