2023
DOI: 10.48550/arxiv.2302.07129
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SHEEP: Signed Hamiltonian Eigenvector Embedding for Proximity

Abstract: We introduce a spectral embedding algorithm for finding proximal relationships between nodes in signed graphs, where edges can take either positive or negative weights. Adopting a physical perspective, we construct a Hamiltonian which is dependent on the distance between nodes, such that relative embedding distance results in a similarity metric between nodes. The Hamiltonian admits a global minimum energy configuration, which can be re-configured as an eigenvector problem, and therefore is computationally eff… Show more

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