1,207 research outputs found

    Exact Distance Oracles for Planar Graphs with Failing Vertices

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    We consider exact distance oracles for directed weighted planar graphs in the presence of failing vertices. Given a source vertex uu, a target vertex vv and a set XX of kk failed vertices, such an oracle returns the length of a shortest uu-to-vv path that avoids all vertices in XX. We propose oracles that can handle any number kk of failures. More specifically, for a directed weighted planar graph with nn vertices, any constant kk, and for any q∈[1,n]q \in [1,\sqrt n], we propose an oracle of size O~(nk+3/2q2k+1)\tilde{\mathcal{O}}(\frac{n^{k+3/2}}{q^{2k+1}}) that answers queries in O~(q)\tilde{\mathcal{O}}(q) time. In particular, we show an O~(n)\tilde{\mathcal{O}}(n)-size, O~(n)\tilde{\mathcal{O}}(\sqrt{n})-query-time oracle for any constant kk. This matches, up to polylogarithmic factors, the fastest failure-free distance oracles with nearly linear space. For single vertex failures (k=1k=1), our O~(n5/2q3)\tilde{\mathcal{O}}(\frac{n^{5/2}}{q^3})-size, O~(q)\tilde{\mathcal{O}}(q)-query-time oracle improves over the previously best known tradeoff of Baswana et al. [SODA 2012] by polynomial factors for q=Ω(nt)q = \Omega(n^t), t∈(1/4,1/2]t \in (1/4,1/2]. For multiple failures, no planarity exploiting results were previously known

    Bregman Voronoi Diagrams: Properties, Algorithms and Applications

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    The Voronoi diagram of a finite set of objects is a fundamental geometric structure that subdivides the embedding space into regions, each region consisting of the points that are closer to a given object than to the others. We may define many variants of Voronoi diagrams depending on the class of objects, the distance functions and the embedding space. In this paper, we investigate a framework for defining and building Voronoi diagrams for a broad class of distance functions called Bregman divergences. Bregman divergences include not only the traditional (squared) Euclidean distance but also various divergence measures based on entropic functions. Accordingly, Bregman Voronoi diagrams allow to define information-theoretic Voronoi diagrams in statistical parametric spaces based on the relative entropy of distributions. We define several types of Bregman diagrams, establish correspondences between those diagrams (using the Legendre transformation), and show how to compute them efficiently. We also introduce extensions of these diagrams, e.g. k-order and k-bag Bregman Voronoi diagrams, and introduce Bregman triangulations of a set of points and their connexion with Bregman Voronoi diagrams. We show that these triangulations capture many of the properties of the celebrated Delaunay triangulation. Finally, we give some applications of Bregman Voronoi diagrams which are of interest in the context of computational geometry and machine learning.Comment: Extend the proceedings abstract of SODA 2007 (46 pages, 15 figures
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