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« Data-dependent Hashing via Nonlinear Spectral Gaps

Data-dependent Hashing via Nonlinear Spectral Gaps

August 13, 2018, 3:00 PM - 3:30 PM

Location:

Iacocca Hall

Lehigh University

Bethlehem PA

Click here for map.

Alexandr Andoni, Columbia University

We establish a generic reduction from nonlinear spectral gaps of metric spaces to space partitions, in the form of data-dependent Locality-Sensitive Hashing. This yields a new approach to the high-dimensional Approximate Near Neighbor Search problem (ANN). Using this reduction, we obtain a new ANN data structure under an arbitrary d-dimensional norm, where the query algorithm makes only a sublinear number of probes into the data structure. Most importantly, the new data structure achieves a O(log d) approximation for an arbitrary norm. The only other such generic approach, via John's ellipsoid, would achieve square-root-d approximation only.

Joint work with Assaf Naor, Aleksandar Nikolov, Ilya Razenshteyn, and Erik Waingarten.