Stochastic Subspace via Probabilistic Principal Component Analysis for Characterizing Model Error
By: Akash Yadav, Ruda Zhang
Potential Business Impact:
Makes computer models predict real-world behavior better.
This paper proposes a probabilistic model of subspaces based on the probabilistic principal component analysis (PCA). Given a sample of vectors in the embedding space -- commonly known as a snapshot matrix -- this method uses quantities derived from the probabilistic PCA to construct distributions of the sample matrix, as well as the principal subspaces. It is applicable to projection-based reduced-order modeling methods, such as proper orthogonal decomposition and related model reduction methods. The stochastic subspace thus constructed can be used, for example, to characterize model-form uncertainty in computational mechanics. The proposed method has multiple desirable properties: (1) it is naturally justified by the probabilistic PCA and has analytic forms for the induced random matrix models; (2) it satisfies linear constraints, such as boundary conditions of all kinds, by default; (3) it has only one hyperparameter, which significantly simplifies training; and (4) its algorithm is very easy to implement. We demonstrate the performance of the proposed method via several numerical examples in computational mechanics and structural dynamics.
Similar Papers
ALPCAH: Subspace Learning for Sample-wise Heteroscedastic Data
Machine Learning (Stat)
Improves data analysis with messy, uneven information.
Beyond Regularization: Inherently Sparse Principal Component Analysis
Methodology
Finds hidden patterns in complex information.
Few-Round Distributed Principal Component Analysis: Closing the Statistical Efficiency Gap by Consensus
Methodology
Improves computer analysis of huge amounts of data.