DSLGOct 8, 2022

Dynamic Tensor Product Regression

arXiv:2210.03961v222 citationsh-index: 12
Originality Incremental advance
AI Analysis

This work addresses a computational bottleneck in machine learning and data analysis for applications involving large-scale tensor product models with incremental updates, though it appears incremental in method.

The paper tackles the problem of efficiently updating regression solutions when the design matrix is a tensor product of multiple matrices that undergo sparse changes over time, by introducing a dynamic tree data structure that propagates updates quickly. The result enables fast maintenance of solutions for dynamic tensor product regression, spline regression, and low-rank approximations without recomputation from scratch.

In this work, we initiate the study of \emph{Dynamic Tensor Product Regression}. One has matrices $A_1\in \mathbb{R}^{n_1\times d_1},\ldots,A_q\in \mathbb{R}^{n_q\times d_q}$ and a label vector $b\in \mathbb{R}^{n_1\ldots n_q}$, and the goal is to solve the regression problem with the design matrix $A$ being the tensor product of the matrices $A_1, A_2, \dots, A_q$ i.e. $\min_{x\in \mathbb{R}^{d_1\ldots d_q}}~\|(A_1\otimes \ldots\otimes A_q)x-b\|_2$. At each time step, one matrix $A_i$ receives a sparse change, and the goal is to maintain a sketch of the tensor product $A_1\otimes\ldots \otimes A_q$ so that the regression solution can be updated quickly. Recomputing the solution from scratch for each round is very slow and so it is important to develop algorithms which can quickly update the solution with the new design matrix. Our main result is a dynamic tree data structure where any update to a single matrix can be propagated quickly throughout the tree. We show that our data structure can be used to solve dynamic versions of not only Tensor Product Regression, but also Tensor Product Spline regression (which is a generalization of ridge regression) and for maintaining Low Rank Approximations for the tensor product.

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