Simplicial Message Passing for Chemical Property Prediction

arXiv:2307.05392v1h-index: 12
AI Analysis

This work addresses a problem in computational chemistry for materials discovery, offering a generalized framework that is incremental but with strong specific gains.

The authors tackled the limitation of classical message-passing neural networks in capturing topological information in molecular graphs by proposing a Simplicial Message Passing framework, which achieved state-of-the-art results in quantum-chemical property prediction.

Recently, message-passing Neural networks (MPNN) provide a promising tool for dealing with molecular graphs and have achieved remarkable success in facilitating the discovery and materials design with desired properties. However, the classical MPNN methods also suffer from a limitation in capturing the strong topological information hidden in molecular structures, such as nonisomorphic graphs. To address this problem, this work proposes a Simplicial Message Passing (SMP) framework to better capture the topological information from molecules, which can break through the limitation within the vanilla message-passing paradigm. In SMP, a generalized message-passing framework is established for aggregating the information from arbitrary-order simplicial complex, and a hierarchical structure is elaborated to allow information exchange between different order simplices. We apply the SMP framework within deep learning architectures for quantum-chemical properties prediction and achieve state-of-the-art results. The results show that compared to traditional MPNN, involving higher-order simplex can better capture the complex structure of molecules and substantially enhance the performance of tasks. The SMP-based model can provide a generalized framework for GNNs and aid in the discovery and design of materials with tailored properties for various applications.

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