all search terms
2024 年 10 月 21 日
Discrete empirical interpolation in the tensor tproduct framework
title: Discrete empirical interpolation in the tensor tproduct framework
publish date:
2024-10-18
authors:
Sridhar Chellappa et.al.
paper id
2410.14519v1
download
abstracts:
The discrete empirical interpolation method (DEIM) is a well-established approach, widely used for state reconstruction using sparse sensor/measurement data, nonlinear model reduction, and interpretable feature selection. We introduce the tensor t-product Q-DEIM (t-Q-DEIM), an extension of the DEIM framework for dealing with tensor-valued data. The proposed approach seeks to overcome one of the key drawbacks of DEIM, viz., the need for matricizing the data, which can distort any structural and/or geometric information. Our method leverages the recently developed tensor t-product algebra to avoid reshaping the data. In analogy with the standard DEIM, we formulate and solve a tensor-valued least-squares problem, whose solution is achieved through an interpolatory projection. We develop a rigorous, computable upper bound for the error resulting from the t-Q-DEIM approximation. Using five different tensor-valued datasets, we numerically illustrate the better approximation properties of t-Q-DEIM and the significant computational cost reduction it offers.
QA:
coming soon
编辑整理: wanghaisheng 更新日期:2024 年 10 月 21 日