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  • title: Learning Substructure Invariance for Out-of-Distribution Molecular Representations
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            Learning Substructure Invariance for Out-of-Distribution Molecular Representations
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            Learning Substructure Invariance for Out-of-Distribution Molecular Representations

            Dec 6, 2022

            Speakers

            NY

            Nianzu Yang

            Sprecher:in · 0 Follower:innen

            KZ

            Kaipeng Zeng

            Sprecher:in · 0 Follower:innen

            QW

            Qitian Wu

            Sprecher:in · 0 Follower:innen

            About

            Molecule representation learning (MRL) has been extensively studied and current methods have shown promising power for various tasks, e.g., molecular property prediction and target identification. However, a common hypothesis of existing methods is that either the model development or experimental evaluation is mostly based on i.i.d. data across training and testing. Such a hypothesis can be violated in real-world applications where testing molecules could come from new environments, bringing ab…

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            NeurIPS 2022

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