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On the second-largest modulus among the eigenvalues of a power hypergraph (2503.21174v1)

Published 27 Mar 2025 in math.CO

Abstract: It is well known that the algebraic multiplicity of an eigenvalue of a graph (or real symmetric matrix) is equal to the dimension of its corresponding linear eigen-subspace, also known as the geometric multiplicity. However, for hypergraphs, the relationship between these two multiplicities remains an open problem. For a graph $G=(V,E)$ and $k \geq 3$, the $k$-power hypergraph $G{(k)}$ is a $k$-uniform hypergraph obtained by adding $k-2$ new vertices to each edge of $G$, who always has non-real eigenvalues. In this paper, we determine the second-largest modulus $\Lambda$ among the eigenvalues of $G{(k)}$, which is indeed an eigenvalue of $G{(k)}$. The projective eigenvariety $\mathbb{V}{\Lambda}$ associated with $\Lambda$ is the set of the eigenvectors of $G{(k)}$ corresponding to $\Lambda$ considered in the complex projective space. We show that the dimension of $\mathbb{V}{\Lambda}$ is zero, i.e, there are finitely many eigenvectors corresponding to $\Lambda$ up to a scalar. We give both the algebraic multiplicity of $\Lambda$ and the total multiplicity of the eigenvector in $\mathbb{V}_{\Lambda}$ in terms of the number of the weakest edges of $G$. Our result show that these two multiplicities are equal.

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