Hyperedge Estimation using Polylogarithmic Subset Queries
August 12, 2019 Β· Declared Dead Β· π arXiv.org
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Authors
Anup Bhattacharya, Arijit Bishnu, Arijit Ghosh, Gopinath Mishra
arXiv ID
1908.04196
Category
cs.DS: Data Structures & Algorithms
Citations
13
Venue
arXiv.org
Last Checked
3 months ago
Abstract
In this work, we estimate the number of hyperedges in a hypergraph ${\cal H}(U({\cal H}), {\cal F}({\cal H}))$, where $U({\cal H})$ denotes the set of vertices and ${\cal F}({\cal H}))$ denotes the set of hyperedges. We assume a query oracle access to the hypergraph ${\cal H}$. Estimating the number of edges, triangles or small subgraphs in a graph is a well studied problem. Beame \etal~and Bhattacharya \etal~gave algorithms to estimate the number of edges and triangles in a graph using queries to the {\sc Bipartite Independent Set} ({\sc BIS}) and the {\sc Tripartite Independent Set} ({\sc TIS}) oracles, respectively. We generalize the earlier works by estimating the number of hyperedges using a query oracle, known as the {\bf Generalized $d$-partite independent set oracle ({\sc GPIS})}, that takes $d$ (non-empty) pairwise disjoint subsets of vertices $A_1,\ldots,A_d \subseteq U({\cal H})$ as input, and answers whether there exists a hyperedge in ${\cal H}$ having (exactly) one vertex in each $A_i, i \in \{1,2,\ldots,d\}$. We give a randomized algorithm for the hyperedge estimation problem using the {\sc GPIS} query oracle to output $\widehat{m}$ for $m({\cal H})$ satisfying $(1-Ξ΅) \cdot m({\cal H}) \leq \widehat{m} \leq (1+Ξ΅) \cdot m({\cal H})$. The number of queries made by our algorithm, assuming $d$ to be a constant, is polylogarithmic in the number of vertices of the hypergraph.
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