heat kernel embeddings, differential geometry and graph structure

heat kernel embeddings, differential geometry and graph structure

;Hewayda ElGhawalby;Edwin R. Hancock
case reports in gastrointestinal medicine 2015 Vol. 4 pp. 275-293
77
elghawalby2015axiomsheat

Abstract

In this paper, we investigate the heat kernel embedding as a route to graph representation. The heat kernel of the graph encapsulates information concerning the distribution of path lengths and, hence, node affinities on the graph; and is found by exponentiating the Laplacian eigen-system over time. A Young–Householder decomposition is performed on the heat kernel to obtain the matrix of the embedded coordinates for the nodes of the graph. With the embeddings at hand, we establish a graph characterization based on differential geometry by computing sets of curvatures associated with the graph edges and triangular faces. A sectional curvature computed from the difference between geodesic and Euclidean distances between nodes is associated with the edges of the graph. Furthermore, we use the Gauss–Bonnet theorem to compute the Gaussian curvatures associated with triangular faces of the graph.

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200280
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