标杆管理
计算机科学
直觉
首脑会议
机器学习
贝叶斯优化
人工智能
贝叶斯概率
哲学
认识论
营销
自然地理学
业务
地理
作者
Kobi Felton,Jan G. Rittig,Alexei A. Lapkin
标识
DOI:10.1002/cmtd.202000051
摘要
Abstract In the fine chemicals industry, reaction screening and optimisation are essential to development of new products. However, this screening can be extremely time and labor intensive, especially when intuition is used. Machine learning offers a solution through iterative suggestions of new experiments based on past experimental data, but knowing which machine learning strategy to apply in a particular case is still difficult. Here, we develop chemically‐motivated virtual benchmarks for reaction optimisation and compare several strategies on these benchmarks. The benchmarks and strategies are encompassed in an open‐source framework named Summit. The results of our tests show that Bayesian optimisation strategies perform very well across the types of problems faced in chemical reaction optimisation, while many strategies commonly used in reaction optimisation fail to find optimal solutions.
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