CHEM-PHLGFeb 6, 2025

Retro-Rank-In: A Ranking-Based Approach for Inorganic Materials Synthesis Planning

arXiv:2502.04289v25 citationsh-index: 6
Originality Highly original
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This work addresses the challenge of generalizing retrosynthesis to new inorganic materials, which could accelerate synthesis planning beyond trial-and-error methods.

The paper tackled the problem of planning inorganic materials synthesis by proposing Retro-Rank-In, a framework that reformulates retrosynthesis as a ranking task, achieving state-of-the-art results in out-of-distribution generalization and correctly predicting unseen precursor pairs like CrB + Al for Cr2AlB2.

Retrosynthesis strategically plans the synthesis of a chemical target compound from simpler, readily available precursor compounds. This process is critical for synthesizing novel inorganic materials, yet traditional methods in inorganic chemistry continue to rely on trial-and-error experimentation. Emerging machine-learning approaches struggle to generalize to entirely new reactions due to their reliance on known precursors, as they frame retrosynthesis as a multi-label classification task. To address these limitations, we propose Retro-Rank-In, a novel framework that reformulates the retrosynthesis problem by embedding target and precursor materials into a shared latent space and learning a pairwise ranker on a bipartite graph of inorganic compounds. We evaluate Retro-Rank-In's generalizability on challenging retrosynthesis dataset splits designed to mitigate data duplicates and overlaps. For instance, for Cr2AlB2, it correctly predicts the verified precursor pair CrB + Al despite never seeing them in training, a capability absent in prior work. Extensive experiments show that Retro-Rank-In sets a new state-of-the-art, particularly in out-of-distribution generalization and candidate set ranking, offering a powerful tool for accelerating inorganic material synthesis.

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