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On Convolutional Approximations to Linear Dimensionality Reduction Operators for Large Scale Data Processing

25 February 2015
Swayambhoo Jain
Jarvis Haupt
ArXiv (abs)PDFHTML
Abstract

In this paper, we examine the problem of approximating a general linear dimensionality reduction (LDR) operator, represented as a matrix A∈Rm×nA \in \mathbb{R}^{m \times n}A∈Rm×n with m<nm < nm<n, by a partial circulant matrix with rows related by circular shifts. Partial circulant matrices admit fast implementations via Fourier transform methods and subsampling operations; our investigation here is motivated by a desire to leverage these potential computational improvements in large-scale data processing tasks. We establish a fundamental result, that most large LDR matrices (whose row spaces are uniformly distributed) in fact cannot be well approximated by partial circulant matrices. Then, we propose a natural generalization of the partial circulant approximation framework that entails approximating the range space of a given LDR operator AAA over a restricted domain of inputs, using a matrix formed as a product of a partial circulant matrix having m′>mm '> mm′>m rows and a m×km \times km×k 'post processing' matrix. We introduce a novel algorithmic technique, based on sparse matrix factorization, for identifying the factors comprising such approximations, and provide preliminary evidence to demonstrate the potential of this approach.

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