A Machine Learning and Explainable AI Framework Tailored for Unbalanced Experimental Catalyst Discovery
The successful application of machine learning (ML) in catalyst design relies on high-quality and diverse data to ensure effective generalization to novel compositions, thereby aiding in catalyst discovery. However, due to complex interactions, catalyst design has long relied on trial-and-error, a c...
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Zusammenfassung: | The successful application of machine learning (ML) in catalyst design relies
on high-quality and diverse data to ensure effective generalization to novel
compositions, thereby aiding in catalyst discovery. However, due to complex
interactions, catalyst design has long relied on trial-and-error, a costly and
labor-intensive process leading to scarce data that is heavily biased towards
undesired, low-yield catalysts. Despite the rise of ML in this field, most
efforts have not focused on dealing with the challenges presented by such
experimental data. To address these challenges, we introduce a robust machine
learning and explainable AI (XAI) framework to accurately classify the
catalytic yield of various compositions and identify the contributions of
individual components. This framework combines a series of ML practices
designed to handle the scarcity and imbalance of catalyst data. We apply the
framework to classify the yield of various catalyst compositions in oxidative
methane coupling, and use it to evaluate the performance of a range of ML
models: tree-based models, logistic regression, support vector machines, and
neural networks. These experiments demonstrate that the methods used in our
framework lead to a significant improvement in the performance of all but one
of the evaluated models. Additionally, the decision-making process of each ML
model is analyzed by identifying the most important features for predicting
catalyst performance using XAI methods. Our analysis found that XAI methods,
providing class-aware explanations, such as Layer-wise Relevance Propagation,
identified key components that contribute specifically to high-yield catalysts.
These findings align with chemical intuition and existing literature,
reinforcing their validity. We believe that such insights can assist chemists
in the development and identification of novel catalysts with superior
performance. |
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DOI: | 10.48550/arxiv.2407.18935 |