LGMLFeb 10, 2022

PCENet: High Dimensional Surrogate Modeling for Learning Uncertainty

arXiv:2202.05063v34 citations
Originality Incremental advance
AI Analysis

This work addresses the computational bottleneck in uncertainty quantification for scientific computing and data analysis, offering a method for moderate to high-dimensional data.

The authors tackled the problem of computationally expensive uncertainty quantification for high-dimensional data by introducing a two-stage dimensionality reduction surrogate modeling approach, achieving efficient learning and uncertainty estimation without prior statistical assumptions.

Learning data representations under uncertainty is an important task that emerges in numerous scientific computing and data analysis applications. However, uncertainty quantification techniques are computationally intensive and become prohibitively expensive for high-dimensional data. In this study, we introduce a dimensionality reduction surrogate modeling (DRSM) approach for representation learning and uncertainty quantification that aims to deal with data of moderate to high dimensions. The approach involves a two-stage learning process: 1) employing a variational autoencoder to learn a low-dimensional representation of the input data distribution; and 2) harnessing polynomial chaos expansion (PCE) formulation to map the low dimensional distribution to the output target. The model enables us to (a) capture the system dynamics efficiently in the low-dimensional latent space, (b) learn under uncertainty, a representation of the data and a mapping between input and output distributions, (c) estimate this uncertainty in the high-dimensional data system, and (d) match high-order moments of the output distribution; without any prior statistical assumptions on the data. Numerical results are presented to illustrate the performance of the proposed method.

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