A Survey on the Densest Subgraph Problem and its Variants

Author:

Lanciano Tommaso1ORCID,Miyauchi Atsushi2ORCID,Fazzone Adriano3ORCID,Bonchi Francesco3ORCID

Affiliation:

1. KTH Royal Institute of Technology, Stockholm, Sweden and Sapienza University, Rome, Italy

2. CENTAI Institute, Turin, Italy

3. CENTAI Institute, Turin Italy

Abstract

The Densest Subgraph Problem requires us to find, in a given graph, a subset of vertices whose induced subgraph maximizes a measure of density. The problem has received a great deal of attention in the algorithmic literature since the early 1970s, with many variants proposed and many applications built on top of this basic definition. Recent years have witnessed a revival of research interest in this problem with several important contributions, including some groundbreaking results, published in 2022 and 2023. This survey provides a deep overview of the fundamental results and an exhaustive coverage of the many variants proposed in the literature, with a special attention to the most recent results. The survey also presents a comprehensive overview of applications and discusses some interesting open problems for this evergreen research topic.

Publisher

Association for Computing Machinery (ACM)

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