2023
DOI: 10.1002/ange.202218659
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Predicting Highly Enantioselective Catalysts Using Tunable Fragment Descriptors**

Abstract: Catalyst optimization processes typically rely on inductive and qualitative assumptions of chemists based on screening data. While machine learning models using molecular properties or calculated 3D structures enable quantitative data evaluation, costly quantum chemical calculations are often required. In contrast, readily available binary fingerprint descriptors are timeand cost-efficient, but their predictive performance remains insufficient. Here, we describe a machine learning model based on fragment descr… Show more

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