DSLGSTSep 11, 2022

Subquadratic Kronecker Regression with Applications to Tensor Decomposition

arXiv:2209.04876v222 citationsh-index: 12
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This improves the efficiency of alternating least squares for Tucker tensor decomposition, which is incremental but important for applications like image processing.

The paper tackles the problem of solving Kronecker regression, a structured least squares problem arising in tensor decomposition algorithms, by presenting the first subquadratic-time algorithm that avoids exponential terms in the running time, achieving a (1+ε)-approximation.

Kronecker regression is a highly-structured least squares problem $\min_{\mathbf{x}} \lVert \mathbf{K}\mathbf{x} - \mathbf{b} \rVert_{2}^2$, where the design matrix $\mathbf{K} = \mathbf{A}^{(1)} \otimes \cdots \otimes \mathbf{A}^{(N)}$ is a Kronecker product of factor matrices. This regression problem arises in each step of the widely-used alternating least squares (ALS) algorithm for computing the Tucker decomposition of a tensor. We present the first subquadratic-time algorithm for solving Kronecker regression to a $(1+\varepsilon)$-approximation that avoids the exponential term $O(\varepsilon^{-N})$ in the running time. Our techniques combine leverage score sampling and iterative methods. By extending our approach to block-design matrices where one block is a Kronecker product, we also achieve subquadratic-time algorithms for (1) Kronecker ridge regression and (2) updating the factor matrices of a Tucker decomposition in ALS, which is not a pure Kronecker regression problem, thereby improving the running time of all steps of Tucker ALS. We demonstrate the speed and accuracy of this Kronecker regression algorithm on synthetic data and real-world image tensors.

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