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Topology-Aware Multiscale Mixture of Experts for Efficient Molecular Property Prediction

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Many molecular properties depend on 3D geometry, where non-covalent interactions, stereochemical effects, and medium- to long-range forces are determined by spatial distances and angles that cannot be uniquely captured by a 2D bond graph. Yet most 3D molecular graph neural networks still rely on globally fixed neighborhood heuristics, typically defined by distance cutoffs and maximum neighbor limits, to define local message-passing neighborhoods, leading to rigid, data-agnostic interaction budgets. We propose Multiscale Interaction Mixture of Experts (MI-MoE) to adapt interaction modeling across geometric regimes. Our contributions are threefold: (1) we introduce a distance-cutoff expert ensemble that explicitly captures short-, mid-, and long-range interactions without committing to a single cutoff; (2) we design a topological gating encoder that routes inputs to experts using filtration-based descriptors, including persistent homology features, summarizing how connectivity evolves across radii; and (3) we show that MI-MoE is a plug-in module that consistently improves multiple strong 3D molecular backbones across diverse molecular and polymer property prediction benchmark datasets, covering both regression and classification tasks. These results highlight topology-aware multiscale routing as an effective principle for 3D molecular graph learning.

Long D. Nguyen, Kelin Xia, Binh P. Nguyen• 2026

Related benchmarks

TaskDatasetResultRank
RegressionMoleculeNet (scaffold)
Lipo0.61
24
Molecular ClassificationMoleculeNet
BACE0.8515
20
Molecular Property Prediction (Eea)Polymer
RMSE0.148
10
Molecular Property Prediction (Ei)Polymer
RMSE0.24
10
Molecular Property Prediction (etac)Polymer
RMSE0.065
10
Molecular Property Prediction (Xc)Polymer
RMSE8.945
10
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