化学吸附
特征(语言学)
周期表
一致性(知识库)
人工神经网络
计算机科学
化学空间
人工智能
吸附
机器学习
模式识别(心理学)
化学
物理
物理化学
生物信息学
量子力学
生物
药物发现
哲学
语言学
作者
Zhuo Li,Changquan Zhao,Hai‐Kun Wang,Yanqing Ding,Yechao Chen,Philippe Schwaller,Ke Yang,Hua Cheng,Yulian He
标识
DOI:10.26434/chemrxiv-2023-t7r63
摘要
The chemisorption energy of reactants on a catalyst surface, E_ads, is among the most informative characters of understanding and pinpointing the optimal catalyst. The intrinsic complexity of catalyst surfaces and chemisorption reactions presents significant difficulties in identifying the pivotal physical quantities determining Eads. In response to this, the study proposes a novel methodology, the feature deletion experiment, based on Automatic Machine Learning (AutoML) for knowledge extraction from a high-throughput density functional theory (DFT) database. The study reveals that, for binary alloy surfaces, the local adsorption site geometric information is the primary physical quantity determining E_ads, compared to the electronic and physiochemical properties of the catalyst alloys. By integrating the feature deletion experiment with instance-wise variable selection (INVASE), a neural network-based explainable AI (XAI) tool, we established the best-performing feature set containing 21 intrinsic, non-DFT computed properties, achieving an MAE of 0.23 eV across a periodic table-wide chemical space involving more than 1,600 types of alloys surfaces and 8,400 chemisorption reactions. This study demonstrates the stability, consistency, and potential of AutoML-based feature deletion experiment in developing concise, predictive, and theoretically meaningful models for complex chemical problems with minimal human intervention.
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