DSITLGSTOct 2, 2021

Random Subgraph Detection Using Queries

arXiv:2110.00744v57 citations
Originality Highly original
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This addresses a variant of the planted densest subgraph detection problem for scenarios with limited observational access, resolving two open questions in the literature.

The paper tackles the problem of detecting a planted dense subgraph when only a small part of the graph can be observed via adaptive edge queries, determining the necessary and sufficient number of queries for detection with a quasi-polynomial optimal algorithm and proposing a polynomial-time algorithm that requires more queries.

The planted densest subgraph detection problem refers to the task of testing whether in a given (random) graph there is a subgraph that is unusually dense. Specifically, we observe an undirected and unweighted graph on $n$ vertices. Under the null hypothesis, the graph is a realization of an Erdős-Rényi graph with edge probability (or, density) $q$. Under the alternative, there is a subgraph on $k$ vertices with edge probability $p>q$. The statistical as well as the computational barriers of this problem are well-understood for a wide range of the edge parameters $p$ and $q$. In this paper, we consider a natural variant of the above problem, where one can only observe a relatively small part of the graph using adaptive edge queries. For this model, we determine the number of queries necessary and sufficient (accompanied with a quasi-polynomial optimal algorithm) for detecting the presence of the planted subgraph. We also propose a polynomial-time algorithm which is able to detect the planted subgraph, albeit with more queries compared to the above lower bound. We conjecture that in the leftover regime, no polynomial-time algorithms exist. Our results resolve two open questions posed in the past literature.

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