Multiple methods of finding the vertices belonging to a planted dense subgraph in a random dense $G(n, p)$ graph have been proposed, with an emphasis on planted cliques. Such methods can identify the planted subgraph in polynomial time, but are all limited to several subgraph structures. Here, we present PYGON, a graph neural network-based algorithm, which is insensitive to the structure of the planted subgraph. This is the first algorithm that uses advanced learning tools for recovering dense subgraphs. We show that PYGON can recover cliques of sizes $\Theta\left(\sqrt{n}\right)$, where $n$ is the size of the background graph, comparable with the state of the art. We also show that the same algorithm can recover multiple other planted subg...
AbstractSurprisingly, general heuristics often solve some instances of hard combinatorial problems q...
We study the problems of counting copies and induced copies of a small pattern graph H in a large ho...
The problem of detecting dense subgraphs (\emph{communities}) in large sparse graphs is inherent to ...
We study the planted clique problem in which a clique of size k is planted in an Erdos-Renyi graph G...
We study the problem of finding a large planted clique in the random graph $G_{n,1/2}$. We reduce t...
In the well known planted clique problem, a clique (or alternatively, an independent set) of size k ...
We provide a rearrangement based algorithm for fast detection of subgraphs of $k$ vertices with long...
International audienceWe formalize the problem of detecting a community in a network into testing wh...
The problem of finding the densest subgraph in a given graph has several real-world applications, pa...
Extracting dense subgraphs from large graphs is a key prim-itive in a variety of graph mining applic...
The densest subgraph problem, introduced in the 80s by Picard and Queyranne as well as Goldberg, is ...
An identifying code of a graph is a dominating set which uniquely determines all the vertices by the...
Abstract. Dense subgraph discovery is a key issue in graph mining, due to its importance in several ...
AbstractWe consider the problem of learning a general graph using edge-detecting queries. In this mo...
Finding large cliques or cliques missing a few edges is a fundamental algorithmic task in the study ...
AbstractSurprisingly, general heuristics often solve some instances of hard combinatorial problems q...
We study the problems of counting copies and induced copies of a small pattern graph H in a large ho...
The problem of detecting dense subgraphs (\emph{communities}) in large sparse graphs is inherent to ...
We study the planted clique problem in which a clique of size k is planted in an Erdos-Renyi graph G...
We study the problem of finding a large planted clique in the random graph $G_{n,1/2}$. We reduce t...
In the well known planted clique problem, a clique (or alternatively, an independent set) of size k ...
We provide a rearrangement based algorithm for fast detection of subgraphs of $k$ vertices with long...
International audienceWe formalize the problem of detecting a community in a network into testing wh...
The problem of finding the densest subgraph in a given graph has several real-world applications, pa...
Extracting dense subgraphs from large graphs is a key prim-itive in a variety of graph mining applic...
The densest subgraph problem, introduced in the 80s by Picard and Queyranne as well as Goldberg, is ...
An identifying code of a graph is a dominating set which uniquely determines all the vertices by the...
Abstract. Dense subgraph discovery is a key issue in graph mining, due to its importance in several ...
AbstractWe consider the problem of learning a general graph using edge-detecting queries. In this mo...
Finding large cliques or cliques missing a few edges is a fundamental algorithmic task in the study ...
AbstractSurprisingly, general heuristics often solve some instances of hard combinatorial problems q...
We study the problems of counting copies and induced copies of a small pattern graph H in a large ho...
The problem of detecting dense subgraphs (\emph{communities}) in large sparse graphs is inherent to ...