Reliable emulation of complex functionals by active learning with error control
ORAL
Abstract
A statistical emulator can be used as a surrogate of complex physics-based calculations to drastically reduce the computational cost. Its successful implementation hinges on an accurate representation of the nonlinear response surface with a high-dimensional input space. Conventional "space-filling'' designs, including random sampling and Latin hypercube sampling, become inefficient as the dimensionality of the input variables increases, and the predictive accuracy of the emulator can degrade substantially for a test input away from the training input set. To address this fundamental challenge, we develop a reliable emulator for predicting complex functionals by active learning with error control (ALEC). The algorithm is applicable to infinite-dimensional mapping with high-fidelity predictions and a controlled predictive error. The computational efficiency has been demonstrated by emulating the classical density functional theory (cDFT) calculations, a statistical-mechanical method widely used in modeling the equilibrium properties of complex molecular systems. We show that ALEC is more accurate than conventional emulators based on the Gaussian processes with "space-filling'' designs and alternative active learning methods. Besides, it is computationally more efficient than direct cDFT calculations. ALEC can be a reliable building block for emulating expensive functionals owing to its minimal computational cost, controllable predictive error, and fully automatic features.
* This research is supported by the National Science Foundation under Award No. 2053423.
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Publication: Fang, X., Gu, M., & Wu, J. (2022). Reliable emulation of complex functionals by active learning with error control. The Journal of Chemical Physics, 157(21).
Presenters
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Xinyi Fang
University of California, Santa Barbara
Authors
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Xinyi Fang
University of California, Santa Barbara
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Mengyang Gu
University of California, Santa Barbara
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Jianzhong Wu
University of California, Riverside