Faster Counting and Sampling Algorithms using Colorful Decision Oracle
Anup Bhattacharya, Arijit Bishnu, Arijit Ghosh, and Gopinath Mishra

TL;DR
This paper introduces a faster algorithm for estimating the number of hyperedges in a hypergraph using a specialized oracle, improving query complexity bounds and impacting related combinatorial problems.
Contribution
It presents a novel algorithm for hyperedge estimation with improved query complexity bounds using a colorful decision oracle.
Findings
Estimates hyperedge count within a logarithmic factor using fewer queries.
Improves bounds for fundamental combinatorial optimization problems.
Provides a framework for efficient hypergraph analysis with oracle access.
Abstract
In this work, we consider -{\sc Hyperedge Estimation} and -{\sc Hyperedge Sample} problem in a hypergraph in the query complexity framework, where denotes the set of vertices and denotes the set of hyperedges. The oracle access to the hypergraph is called {\sc Colorful Independence Oracle} ({\sc CID}), which takes (non-empty) pairwise disjoint subsets of vertices as input, and answers whether there exists a hyperedge in having (exactly) one vertex in each . The problem of -{\sc Hyperedge Estimation} and -{\sc Hyperedge Sample} with {\sc CID} oracle access is important in its own right as a combinatorial problem. Also, Dell {\it{et al.}}~[SODA '20] established that {\em decision} vs {\em…
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