Approximate Near Neighbors for General Symmetric Norms
Abstract: We show that every symmetric normed space admits an efficient nearest neighbor search data structure with doubly-logarithmic approximation. Specifically, for every $n$, $d = n{o(1)}$, and every $d$-dimensional symmetric norm $|\cdot|$, there exists a data structure for $\mathrm{poly}(\log \log n)$-approximate nearest neighbor search over $|\cdot|$ for $n$-point datasets achieving $n{o(1)}$ query time and $n{1+o(1)}$ space. The main technical ingredient of the algorithm is a low-distortion embedding of a symmetric norm into a low-dimensional iterated product of top-$k$ norms. We also show that our techniques cannot be extended to general norms.
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