Non-Adaptive Edge Counting and Sampling via Bipartite Independent Set Queries
We study the problem of estimating the number of edges in an n-vertex graph, accessed via the Bipartite Independent Set query model introduced by Beame et al. (ITCS '18). In this model, each query returns a Boolean, indicating the existence of at least one edge between two specified sets of nodes. We present a non-adaptive algorithm that returns a (1±ϵ) relative error approximation to the number of edges, with query complexity Õ(ϵ^-5log^5 n ), where Õ(·) hides poly(loglog n) dependencies. This is the first non-adaptive algorithm in this setting achieving poly(1/ϵ,log n) query complexity. Prior work requires Ω(log^2 n) rounds of adaptivity. We avoid this by taking a fundamentally different approach, inspired by work on single-pass streaming algorithms. Moreover, for constant ϵ, our query complexity significantly improves on the best known adaptive algorithm due to Bhattacharya et al. (STACS '22), which requires O(ϵ^-2log^11 n) queries. Building on our edge estimation result, we give the first non-adaptive algorithm for outputting a nearly uniformly sampled edge with query complexity Õ(ϵ^-6log^6 n), improving on the works of Dell et al. (SODA '20) and Bhattacharya et al. (STACS '22), which require Ω(log^3 n) rounds of adaptivity. Finally, as a consequence of our edge sampling algorithm, we obtain a Õ(nlog^ 8 n) query algorithm for connectivity, using two rounds of adaptivity. This improves on a three-round algorithm of Assadi et al. (ESA '21) and is tight; there is no non-adaptive algorithm for connectivity making o(n^2) queries.
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