2 research outputs found

    Data Structures and Advanced Models of Computation on Big Data (Dagstuhl Seminar 16101)

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    Lopez-Ortiz A, Carsten Meyer U, Nebel M, Sedgewick R. Data Structures and Advanced Models of Computation on Big Data (Dagstuhl Seminar 16101). Dagstuhl Reports. 2016;6(3):1--23

    Locality-Sensitive Hashing of Curves

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    We study data structures for storing a set of polygonal curves in Rd{\rm R}^d such that, given a query curve, we can efficiently retrieve similar curves from the set, where similarity is measured using the discrete Fr\'echet distance or the dynamic time warping distance. To this end we devise the first locality-sensitive hashing schemes for these distance measures. A major challenge is posed by the fact that these distance measures internally optimize the alignment between the curves. We give solutions for different types of alignments including constrained and unconstrained versions. For unconstrained alignments, we improve over a result by Indyk from 2002 for short curves. Let nn be the number of input curves and let mm be the maximum complexity of a curve in the input. In the particular case where mα4dlognm \leq \frac{\alpha}{4d} \log n, for some fixed α>0\alpha>0, our solutions imply an approximate near-neighbor data structure for the discrete Fr\'echet distance that uses space in O(n1+αlogn)O(n^{1+\alpha}\log n) and achieves query time in O(nαlog2n)O(n^{\alpha}\log^2 n) and constant approximation factor. Furthermore, our solutions provide a trade-off between approximation quality and computational performance: for any parameter k[m]k \in [m], we can give a data structure that uses space in O(22kmk1nlogn+nm)O(2^{2k}m^{k-1} n \log n + nm), answers queries in O(22kmklogn)O( 2^{2k} m^{k}\log n) time and achieves approximation factor in O(m/k)O(m/k).Comment: Proc. of 33rd International Symposium on Computational Geometry (SoCG), 201
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