English

Core Discovery in Hidden Graphs

Data Structures and Algorithms 2017-12-11 v1

Abstract

Massive network exploration is an important research direction with many applications. In such a setting, the network is, usually, modeled as a graph GG, whereas any structural information of interest is extracted by inspecting the way nodes are connected together. In the case where the adjacency matrix or the adjacency list of GG is available, one can directly apply graph mining algorithms to extract useful knowledge. However, there are cases where this is not possible because the graph is \textit{hidden} or \textit{implicit}, meaning that the edges are not recorded explicitly in the form of an adjacency representation. In such a case, the only alternative is to pose a sequence of \textit{edge probing queries} asking for the existence or not of a particular graph edge. However, checking all possible node pairs is costly (quadratic on the number of nodes). Thus, our objective is to pose as few edge probing queries as possible, since each such query is expected to be costly. In this work, we center our focus on the \textit{core decomposition} of a hidden graph. In particular, we provide an efficient algorithm to detect the maximal subgraph of SkS_k of GG where the induced degree of every node uSku \in S_k is at least kk. Performance evaluation results demonstrate that significant performance improvements are achieved in comparison to baseline approaches.

Keywords

Cite

@article{arxiv.1712.02827,
  title  = {Core Discovery in Hidden Graphs},
  author = {Panagiotis Strouthopoulos and Apostolos Papadopoulos},
  journal= {arXiv preprint arXiv:1712.02827},
  year   = {2017}
}

Comments

12 pages, 4 figures

R2 v1 2026-06-22T23:11:40.538Z