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Poster
in
Workshop: AI for Accelerated Materials Design (AI4Mat-2023)

MHG-GNN: Combination of Molecular Hypergraph Grammar with Graph Neural Network

Akihiro Kishimoto · Hiroshi Kajino · Hirose Masataka · Junta Fuchiwaki · Indra Priyadarsini S · Lisa Hamada · Hajime Shinohara · Daiju Nakano · Seiji Takeda

Keywords: [ Autoencoder ] [ molecular hypergraph grammar ] [ material discovery ] [ Graph neural network ] [ property prediction ] [ autoencoder ] [ graph neural network ]


Abstract:

Property prediction plays an important role in material discovery. As an initial step to eventually develop a foundation model for material science, we introduce a new autoencoder called the MHG-GNN, which combines graph neural network (GNN) with Molecular Hypergraph Grammar (MHG). Results on a variety of property prediction tasks with diverse materials show that MHG-GNN is promising.

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