English

Sliced-Inverse-Regression-Aided Rotated Compressive Sensing Method for Uncertainty Quantification

Numerical Analysis 2018-09-11 v2

Abstract

Compressive-sensing-based uncertainty quantification methods have become a pow- erful tool for problems with limited data. In this work, we use the sliced inverse regression (SIR) method to provide an initial guess for the alternating direction method, which is used to en- hance sparsity of the Hermite polynomial expansion of stochastic quantity of interest. The sparsity improvement increases both the efficiency and accuracy of the compressive-sensing- based uncertainty quantification method. We demonstrate that the initial guess from SIR is more suitable for cases when the available data are limited (Algorithm 4). We also propose another algorithm (Algorithm 5) that performs dimension reduction first with SIR. Then it constructs a Hermite polynomial expansion of the reduced model. This method affords the ability to approximate the statistics accurately with even less available data. Both methods are non-intrusive and require no a priori information of the sparsity of the system. The effec- tiveness of these two methods (Algorithms 4 and 5) are demonstrated using problems with up to 500 random dimensions.

Keywords

Cite

@article{arxiv.1709.07937,
  title  = {Sliced-Inverse-Regression-Aided Rotated Compressive Sensing Method for Uncertainty Quantification},
  author = {Xiu Yang and Weixuan Li and Alexandre Tartakovsky},
  journal= {arXiv preprint arXiv:1709.07937},
  year   = {2018}
}

Comments

In section 4, numerical examples 3-5, replaced the mean of the error with the quantiles and mean of the error. Added section 4.6 to compare different methods

R2 v1 2026-06-22T21:52:23.279Z