170,912 research outputs found
On the spectra of nonsymmetric Laplacian matrices
A Laplacian matrix is a square real matrix with nonpositive off-diagonal
entries and zero row sums. As a matrix associated with a weighted directed
graph, it generalizes the Laplacian matrix of an ordinary graph. A standardized
Laplacian matrix is a Laplacian matrix with the absolute values of the
off-diagonal entries not exceeding 1/n, where n is the order of the matrix. We
study the spectra of Laplacian matrices and relations between Laplacian
matrices and stochastic matrices. We prove that the standardized Laplacian
matrices are semiconvergent. The multiplicities of 0 and 1 as the eigenvalues
of a standardized Laplacian matrix are equal to the in-forest dimension of the
corresponding digraph and one less than the in-forest dimension of the
complementary digraph, respectively. These eigenvalues are semisimple. The
spectrum of a standardized Laplacian matrix belongs to the meet of two closed
disks, one centered at 1/n, another at 1-1/n, each having radius 1-1/n, and two
closed angles, one bounded with two half-lines drawn from 1, another with two
half-lines drawn from 0 through certain points. The imaginary parts of the
eigenvalues are bounded from above by 1/(2n) cot(pi/2n); this maximum converges
to 1/pi as n goes to infinity.
Keywords: Laplacian matrix; Laplacian spectrum of graph; Weighted directed
graph; Forest dimension of digraph; Stochastic matrixComment: 11 page
Hypergraph -Laplacian: A Differential Geometry View
The graph Laplacian plays key roles in information processing of relational
data, and has analogies with the Laplacian in differential geometry. In this
paper, we generalize the analogy between graph Laplacian and differential
geometry to the hypergraph setting, and propose a novel hypergraph
-Laplacian. Unlike the existing two-node graph Laplacians, this
generalization makes it possible to analyze hypergraphs, where the edges are
allowed to connect any number of nodes. Moreover, we propose a semi-supervised
learning method based on the proposed hypergraph -Laplacian, and formalize
them as the analogue to the Dirichlet problem, which often appears in physics.
We further explore theoretical connections to normalized hypergraph cut on a
hypergraph, and propose normalized cut corresponding to hypergraph
-Laplacian. The proposed -Laplacian is shown to outperform standard
hypergraph Laplacians in the experiment on a hypergraph semi-supervised
learning and normalized cut setting.Comment: Extended version of our AAAI-18 pape
Overdetermined boundary value problems for the -Laplacian
We consider overdetermined boundary value problems for the -Laplacian
in a domain of and discuss what kind of implications on the
geometry of the existence of a solution may have. The classical
-Laplacian, the normalized or game-theoretic -Laplacian and the
limit of the -Laplacian as are considered and provide
different answers.Comment: 9 pages, 1 figur
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