论文标题

通过具有错误控制的主动学习对复杂功能的可靠仿真

Reliable emulation of complex functionals by active learning with error control

论文作者

Fang, Xinyi, Gu, Mengyang, Wu, Jianzhong

论文摘要

统计模拟器可以用作基于复杂物理的计算的替代物,以大大降低计算成本。它的成功实现取决于具有高维输入空间的非线性响应表面的准确表示。随着输入变量的尺寸增加,传统的“空间填充”设计,包括随机采样和拉丁超立方体采样,随着输入变量的尺寸增加而变得效率低下,模拟器的预测准确性可以实质性地降级,以使远离训练输入集的测试输入。为了应对这一基本挑战,我们开发了可靠的模拟器,用于通过具有错误控制(ALEC)的主动学习来预测复杂功能。该算法适用于具有高保真预测和受控的预测误差的无限维映射。通过模拟经典密度功能理论(CDFT)计算,该计算效率已证明,这是一种广泛用于建模复杂分子系统的平衡特性的统计机械方法。我们表明,基于高斯工艺,ALEC具有“空间填充”设计和替代性主动学习方法的准确性要准确。此外,它在计算上比直接CDFT计算更有效。 ALEC可能是模拟昂贵功能的可靠构建块,因为其最低的计算成本,可控的预测错误和全自动功能。

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 distant 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 much 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.

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