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arxiv: 2209.13410 · v2 · pith:3E2QDNRYnew · submitted 2022-09-24 · 💻 cs.LG · q-bio.BM· q-bio.QM

Graph Neural Network Expressivity and Meta-Learning for Molecular Property Regression

classification 💻 cs.LG q-bio.BMq-bio.QM
keywords meta-learningregressionexpressivitylearningmoleculartasksableadditionally
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We demonstrate the applicability of model-agnostic algorithms for meta-learning, specifically Reptile, to GNN models in molecular regression tasks. Using meta-learning we are able to learn new chemical prediction tasks with only a few model updates, as compared to using randomly initialized GNNs which require learning each regression task from scratch. We experimentally show that GNN layer expressivity is correlated to improved meta-learning. Additionally, we also experiment with GNN emsembles which yield best performance and rapid convergence for k-shot learning.

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