Faster Johnson-Lindenstrauss Transforms via Kronecker Products

Abstract

The Kronecker product is an important matrix operation with a wide range of applications in supporting fast linear transforms, including signal processing, graph theory, quantum computing and deep learning. In this work, we introduce a generalization of the fast Johnson-Lindenstrauss projection for embedding vectors with Kronecker product structure, the Kronecker fast Johnson-Lindenstrauss transform (KFJLT). The KFJLT reduces the embedding cost to an exponential factor of the standard fast Johnson-Lindenstrauss transform (FJLT)'s cost when applied to vectors with Kronecker structure, by avoiding explicitly forming the full Kronecker products. We prove that this computational gain comes with only a small price in embedding power: given N = Πk=1d nk, consider a finite set of p points in a tensor product of d constituent Euclidean spaces k=d1Rnk ⊂ RN. With high probability, a random KFJLT matrix of dimension N × m embeds the set of points up to multiplicative distortion (1 ) provided by m -2 · 2d - 1 (p) · N. We conclude by describing a direct application of the KFJLT to the efficient solution of large-scale Kronecker-structured least squares problems for fitting the CP tensor decomposition.

0

Discussion (0)

Sign in to join the discussion.

Loading comments…