English

A label-switching algorithm for fast core-periphery identification

Computation 2026-01-27 v3

Abstract

Core-periphery (CP) structure is frequently observed in networks where the nodes form two distinct groups: a small, densely interconnected core and a sparse periphery. Borgatti and Everett (2000) proposed one of the most popular methods to identify and quantify CP structure by comparing the observed network with an ``ideal'' CP structure. While this metric has been widely used, an improved algorithm is still needed. In this work, we detail a greedy, label-switching algorithm to identify CP structure that is both fast and accurate. By leveraging a mathematical reformulation of the CP metric, our proposed heuristic offers an order-of-magnitude improvement on the number of operations compared to a naive implementation. We prove that the algorithm monotonically ascends to a local maximum while consistently yielding solutions within 90% of the global optimum on small toy networks. On synthetic networks, our algorithm exhibits superior classification accuracies and run-times compared to a popular competing method, and on one-real world network, it is 340 times faster.

Cite

@article{arxiv.2506.02069,
  title  = {A label-switching algorithm for fast core-periphery identification},
  author = {Eric Yanchenko and Srijan Sengupta},
  journal= {arXiv preprint arXiv:2506.02069},
  year   = {2026}
}