3 research outputs found

    Metric Embedding via Shortest Path Decompositions

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    We study the problem of embedding shortest-path metrics of weighted graphs into β„“p\ell_p spaces. We introduce a new embedding technique based on low-depth decompositions of a graph via shortest paths. The notion of Shortest Path Decomposition depth is inductively defined: A (weighed) path graph has shortest path decomposition (SPD) depth 11. General graph has an SPD of depth kk if it contains a shortest path whose deletion leads to a graph, each of whose components has SPD depth at most kβˆ’1k-1. In this paper we give an O(kmin⁑{1p,12})O(k^{\min\{\frac{1}{p},\frac{1}{2}\}})-distortion embedding for graphs of SPD depth at most kk. This result is asymptotically tight for any fixed p>1p>1, while for p=1p=1 it is tight up to second order terms. As a corollary of this result, we show that graphs having pathwidth kk embed into β„“p\ell_p with distortion O(kmin⁑{1p,12})O(k^{\min\{\frac{1}{p},\frac{1}{2}\}}). For p=1p=1, this improves over the best previous bound of Lee and Sidiropoulos that was exponential in kk; moreover, for other values of pp it gives the first embeddings whose distortion is independent of the graph size nn. Furthermore, we use the fact that planar graphs have SPD depth O(log⁑n)O(\log n) to give a new proof that any planar graph embeds into β„“1\ell_1 with distortion O(log⁑n)O(\sqrt{\log n}). Our approach also gives new results for graphs with bounded treewidth, and for graphs excluding a fixed minor
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