在化学中应用多保真贝叶斯优化:公开挑战和主要考虑因素

Edmund Judge, Mohammed Azzouzi, Austin M. Mroz, Antonio del Rio Chanona, Kim E. Jelfs
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引用次数: 0

摘要

多保真贝叶斯优化(MFBO)利用不同质量和资源成本的实验数据和计算数据,以低成本高效率地优化达到预期的最大值。由于 MFBO 能够整合各种数据源,因此这种方法对化学发现尤其具有吸引力。在此,我们研究了如何应用 MFBO 来加速识别有前途的分子或材料。与保真度较低的问题公式相比,我们特别分析了保真度较低的数据能够提高性能的条件。我们解决了两个关键难题:选择最佳采集函数、了解成本的影响以及数据保真度相关性。然后,我们讨论了如何评估 MFBO 在化学发现方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying Multi-Fidelity Bayesian Optimization in Chemistry: Open Challenges and Major Considerations
Multi fidelity Bayesian optimization (MFBO) leverages experimental and or computational data of varying quality and resource cost to optimize towards desired maxima cost effectively. This approach is particularly attractive for chemical discovery due to MFBO's ability to integrate diverse data sources. Here, we investigate the application of MFBO to accelerate the identification of promising molecules or materials. We specifically analyze the conditions under which lower fidelity data can enhance performance compared to single-fidelity problem formulations. We address two key challenges, selecting the optimal acquisition function, understanding the impact of cost, and data fidelity correlation. We then discuss how to assess the effectiveness of MFBO for chemical discovery.
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