Lower Bounds for Oblivious Near-Neighbor Search

Abstract
We prove an lower bound on the dynamic cell-probe complexity of statistically approximate-near-neighbor search () over the -dimensional Hamming cube. For the natural setting of , our result implies an lower bound, which is a quadratic improvement over the highest (non-oblivious) cell-probe lower bound for . This is the first super-logarithmic lower bound for against general (non black-box) data structures. We also show that any oblivious data structure for decomposable search problems (like ) can be obliviously dynamized with overhead in update and query time, strengthening a classic result of Bentley and Saxe (Algorithmica, 1980).
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