散点数据插值产生的多线性系统的可扩展优化方法

IF 1.2 Q2 MATHEMATICS, APPLIED CSIAM Transactions on Applied Mathematics Pub Date : 2024-05-01 DOI:10.4208/csiam-am.so-2023-0045
Yannan Chen, Kaidong Fu, Can Li and Qi Ye
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引用次数: 0

摘要

.散点数据插值的目的是重建一个连续(平滑)的函数,通过对数据点的网格化(无网格化)处理来近似底层函数。散点数据插值在计算机图形学、流体动力学、逆运动学、机器学习等领域有着广泛的应用。在本文中,我们考虑了在再现核巴纳赫空间中用于分散数据插值的新型广义墨塞尔核。插值方程系统被表述为具有结构张量的多线性系统,而结构张量是绝对均匀收敛的对称秩一张量的有限级数。然后,我们设计了一种快速数值计算方法,可以任意精度计算结构张量与任意向量的乘积。之后,我们定制了一种配备有限内存 BFGS 和沃尔夫线性搜索技术的可扩展优化方法,用于求解这些多线性系统。我们利用 Łojasiewicz 不等式证明,所提出的可扩展优化方法是一种全局收敛算法,并具有线性或亚线性收敛速率。数值实验表明,所提出的可扩展优化方法可以提高插值精度和计算效率。
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A Scalable Optimization Approach for the Multilinear System Arising from Scattered Data Interpolation
. Scattered data interpolation aims to reconstruct a continuous (smooth) function that approximates the underlying function by fitting (meshless) data points. There are extensive applications of scattered data interpolation in computer graphics, fluid dynamics, inverse kinematics, machine learning, etc. In this paper, we consider a novel generalized Mercel kernel in the reproducing kernel Banach space for scattered data interpolation. The system of interpolation equations is formulated as a multilinear sys-tem with a structural tensor, which is an absolutely and uniformly convergent infinite series of symmetric rank-one tensors. Then we design a fast numerical method for computing the product of the structural tensor and any vector in arbitrary precision. Whereafter, a scalable optimization approach equipped with limited-memory BFGS and Wolfe line-search techniques is customized for solving these multilinear systems. Using the Łojasiewicz inequality, we prove that the proposed scalable optimization approach is a globally convergent algorithm and possesses a linear or sublinear convergence rate. Numerical experiments illustrate that the proposed scalable optimization approach can improve the accuracy of interpolation fitting and computational efficiency.
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