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VQ-SAD: Vector Quantized Structure Aware Diffusion For Molecule Generation

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Many diffusion based molecule generation methods ignore the symbolic information of molecules and represent the atom and bond type as one hot representation. Methods based on Morgan fingerprints produce hash collisions and are hard to embed into a continuous space without information loss and random fingerprints correspond to no valid molecule. To circumvent this issue we use another paradigm and consider atom and bond codes as latent variables of VQ-VAE. We introduce VQ-SAD which first trains a VQ-VAE and uses the frozen pretrained VQ-VAE model and considers the codebooks for both atom and bond types as tokenizers for the downstream diffusion process. VQ-SAD is a neuro-symbolic model that utilizes both symbolic and neural structural information for a diffusion based model with learnable forward process. The large discrete code space provides a more balanced atom and bond types which enhances the denoising process. VQ-VAE slightly outperforms SOTA models for diffusion based molecule generation on QM9 and ZINC250k datasets.

Farshad Noravesh, Reza Haffari, Layki Soon, Arghya Pal• 2026

Related benchmarks

TaskDatasetResultRank
Conditional Molecule Generation (Dipole Moment mu)QM9
Validity91.75
4
Conditional Molecule Generation (Heat Capacity at Constant Volume Cv)QM9
Validity95.21
4
Unconditional Molecule GenerationZINC250K
Validity93.84
4
Unconditional Molecule GenerationQM9 with explicit hydrogens
Validity97.31
4
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