高斯过程和神经网络集成代理模型的外推贝叶斯优化

Y. Lim, Chee Koon Ng, U. S. Vaitesswar, K. Hippalgaonkar
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引用次数: 16

摘要

贝叶斯优化(BO)作为材料科学和化学领域自动主动学习驱动的高通量实验中指导实验参数选择的首选算法。以往的研究表明,BO算法中典型的代理模型高斯过程(GPs)的优化性能可能由于无法处理复杂的数据集而受到限制。本文研究了BO的各种代理模型,包括GPs和神经网络集成(NNEs)。使用两个不同复杂性和不同性能的材料数据集来比较GP和nne的性能-第一个是混凝土的抗压强度(8个输入和1个目标),第二个是模拟无机材料热电性能的高维数据集(22个输入和1个目标)。虽然NNEs可以更快地收敛到最优值,但具有优化核的GPs能够在100次迭代后最终获得最佳评估值,即使对于最复杂的数据集也是如此。这个令人惊讶的结果与预期相反。相信这些发现有助于对BO替代模型的理解,并有助于加速具有更好结构和功能性能的新材料的逆向设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extrapolative Bayesian Optimization with Gaussian Process and Neural Network Ensemble Surrogate Models
Bayesian optimization (BO) has emerged as the algorithm of choice for guiding the selection of experimental parameters in automated active learning driven high throughput experiments in materials science and chemistry. Previous studies suggest that optimization performance of the typical surrogate model in the BO algorithm, Gaussian processes (GPs), may be limited due to its inability to handle complex datasets. Herein, various surrogate models for BO, including GPs and neural network ensembles (NNEs), are investigated. Two materials datasets of different complexity with different properties are used, to compare the performance of GP and NNE—the first is the compressive strength of concrete (8 inputs and 1 target), and the second is a simulated high‐dimensional dataset of thermoelectric properties of inorganic materials (22 inputs and 1 target). While NNEs can converge faster toward optimum values, GPs with optimized kernels are able to ultimately achieve the best evaluated values after 100 iterations, even for the most complex dataset. This surprising result is contrary to expectations. It is believed that these findings shed new light on the understanding of surrogate models for BO, and can help accelerate the inverse design of new materials with better structural and functional performance.
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