HYVINT introduces an intensity-driven incidence mechanism and tractable variational estimator for hypergraph generation, with error bounds and empirical gains in fidelity, novelty, and diversity.
aρ logb ρ −log Γ(a ρ) + (aρ −1) ψ(˜aρj)−log ˜bρj −b ρ ˜aρj ˜bρj !# ,(59) and the last prior is Eq[logp(β)] = mX j=1 KX k=1
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HYVINT: Intensity-Driven Hypergraph Generation with Variational Representations
HYVINT introduces an intensity-driven incidence mechanism and tractable variational estimator for hypergraph generation, with error bounds and empirical gains in fidelity, novelty, and diversity.