On the Needs for Rotations in Hypercubic Quantization Hashing

02/12/2018
by   Anne Morvan, et al.
0

The aim of this paper is to endow the well-known family of hypercubic quantization hashing methods with theoretical guarantees. In hypercubic quantization, applying a suitable (random or learned) rotation after dimensionality reduction has been experimentally shown to improve the results accuracy in the nearest neighbors search problem. We prove in this paper that the use of these rotations is optimal under some mild assumptions: getting optimal binary sketches is equivalent to applying a rotation uniformizing the diagonal of the covariance matrix between data points. Moreover, for two closed points, the probability to have dissimilar binary sketches is upper bounded by a factor of the initial distance between the data points. Relaxing these assumptions, we obtain a general concentration result for random matrices. We also provide some experiments illustrating these theoretical points and compare a set of algorithms in both the batch and online settings.

READ FULL TEXT
research
04/18/2019

Global Hashing System for Fast Image Search

Hashing methods have been widely investigated for fast approximate neare...
research
05/18/2017

Linear Dimensionality Reduction in Linear Time: Johnson-Lindenstrauss-type Guarantees for Random Subspace

We consider the problem of efficient randomized dimensionality reduction...
research
03/09/2022

Correlated quantization for distributed mean estimation and optimization

We study the problem of distributed mean estimation and optimization und...
research
06/30/2018

Approximate Nearest Neighbors in Limited Space

We consider the (1+ϵ)-approximate nearest neighbor search problem: given...
research
05/31/2022

One Loss for Quantization: Deep Hashing with Discrete Wasserstein Distributional Matching

Image hashing is a principled approximate nearest neighbor approach to f...
research
06/08/2020

Procrustean Orthogonal Sparse Hashing

Hashing is one of the most popular methods for similarity search because...
research
02/02/2019

Supervised Quantization for Similarity Search

In this paper, we address the problem of searching for semantically simi...

Please sign up or login with your details

Forgot password? Click here to reset