Planted Models for the Densest $k$-Subgraph Problem
April 29, 2020 Β· Declared Dead Β· π Foundations of Software Technology and Theoretical Computer Science
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Authors
Yash Khanna, Anand Louis
arXiv ID
2004.13978
Category
cs.DS: Data Structures & Algorithms
Citations
6
Venue
Foundations of Software Technology and Theoretical Computer Science
Last Checked
4 months ago
Abstract
Given an undirected graph $G$, the Densest $k$-subgraph problem (DkS) asks to compute a set $S \subset V$ of cardinality $\left\lvert S\right\rvert \leq k$ such that the weight of edges inside $S$ is maximized. This is a fundamental NP-hard problem whose approximability, inspite of many decades of research, is yet to be settled. The current best known approximation algorithm due to Bhaskara et al. (2010) computes a $\mathcal{O}\left({n^{1/4 + Ξ΅}}\right)$ approximation in time $n^{\mathcal{O}\left(1/Ξ΅\right)}$, for any $Ξ΅> 0$. We ask what are some "easier" instances of this problem? We propose some natural semi-random models of instances with a planted dense subgraph, and study approximation algorithms for computing the densest subgraph in them. These models are inspired by the semi-random models of instances studied for various other graph problems such as the independent set problem, graph partitioning problems etc. For a large range of parameters of these models, we get significantly better approximation factors for the Densest $k$-subgraph problem. Moreover, our algorithm recovers a large part of the planted solution.
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