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A short review on the maximum clique problem algorithms with classical, AI, and quantum methods

Primary research

#427

T1digested
Topic
Systems and Efficiency
First seen
2026-07-17 07:16:08
Last seen
2026-07-17 07:16:08

Source raw items (1)

  • arXiv2026-07-17 07:15:07
    A short review on the maximum clique problem algorithms with classical, AI, and quantum methods

    This manuscript provides a comprehensive review of the Maximum Clique Problem, a computational problem that involves finding subsets of vertices in a graph that are all pairwise adjacent to each other. As such, this review is a continuation of the series of previous reviews from 1994, 1999 and 2014. The manuscript covers in a simple way classical algorithms and includes a review of recent developments in graph neural networks and quantum algorithms.