Correcting for unknown errors in sparse high-dimensional function approximation

被引:0
|
作者
Ben Adcock
Anyi Bao
Simone Brugiapaglia
机构
[1] Simon Fraser University,
[2] University of British Columbia,undefined
来源
Numerische Mathematik | 2019年 / 142卷
关键词
65D15; 41A10; 94A20;
D O I
暂无
中图分类号
学科分类号
摘要
We consider sparsity-based techniques for the approximation of high-dimensional functions from random pointwise evaluations. To date, almost all the works published in this field contain some a priori assumptions about the error corrupting the samples that are hard to verify in practice. In this paper, we instead focus on the scenario where the error is unknown. We study the performance of four sparsity-promoting optimization problems: weighted quadratically-constrained basis pursuit, weighted LASSO, weighted square-root LASSO, and weighted LAD-LASSO. From the theoretical perspective, we prove uniform recovery guarantees for these decoders, deriving recipes for the optimal choice of the respective tuning parameters. On the numerical side, we compare them in the pure function approximation case and in applications to uncertainty quantification of ODEs and PDEs with random inputs. Our main conclusion is that the lesser-known square-root LASSO is better suited for high-dimensional approximation than the other procedures in the case of bounded noise, since it avoids (both theoretically and numerically) the need for parameter tuning.
引用
收藏
页码:667 / 711
页数:44
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