2023
DOI: 10.1002/jcc.27243
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Learning organo‐transition metal catalyzed reactions by graph neural networks

Motoji Sakai,
Mitsunori Kaneshige,
Koji Yasuda

Abstract: Chemical reaction outcome prediction presents a fundamental challenge in synthetic chemistry. Most existing machine learning (ML) approaches focus on chemical reactions of typical elements. We developed a simple ML model focused on organo‐transition metal‐catalyzed reactions (OMCRs). Instead of overall reactions observed in experiments, we let the ML model learn the sequence of simplified elementary reactions. This drastically reduced the complexity of the model and helped it find common patterns from distinct… Show more

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References 44 publications
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