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Equivariant Energy-Guided SDE for Inverse Molecular Design

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arxiv 2209.15408 v3 pith:D6RDRZST submitted 2022-09-30 physics.chem-ph cs.LGq-bio.BM

Equivariant Energy-Guided SDE for Inverse Molecular Design

classification physics.chem-ph cs.LGq-bio.BM
keywords moleculareegsdeenergydesigninversepropertiesenergy-guidedequivariant
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Inverse molecular design is critical in material science and drug discovery, where the generated molecules should satisfy certain desirable properties. In this paper, we propose equivariant energy-guided stochastic differential equations (EEGSDE), a flexible framework for controllable 3D molecule generation under the guidance of an energy function in diffusion models. Formally, we show that EEGSDE naturally exploits the geometric symmetry in 3D molecular conformation, as long as the energy function is invariant to orthogonal transformations. Empirically, under the guidance of designed energy functions, EEGSDE significantly improves the baseline on QM9, in inverse molecular design targeted to quantum properties and molecular structures. Furthermore, EEGSDE is able to generate molecules with multiple target properties by combining the corresponding energy functions linearly.

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Cited by 4 Pith papers

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    GeoCycler aligns latent diffusion models via reward-weighted training with a type-gated stair reward to raise cyclic peptide closure rates across multiple topologies on the LNR benchmark.

  2. APCyc: Property-Informed Design of Cyclic Peptides via Automated Cyclization

    cs.AI 2026-06 unverdicted novelty 6.0

    APCyc is a target-aware generative model for de novo cyclic peptide design that adds cyclization-site encoding and Bayesian guidance to jointly optimize physicochemical properties.

  3. ParetoPilot: Zero-Surrogate Offline Multi-Objective Optimization via Infer-Perturb-Guide Diffusion

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    ParetoPilot is a zero-surrogate diffusion framework for offline MOO that uses an IPG engine to steer generation via inferred objective directions and orthogonal perturbations, outperforming 14 baselines on 51 tasks.

  4. Latent Diffusion Pretraining for Crystal Property Prediction

    cs.LG 2026-05 unverdicted novelty 6.0

    CrysLDNet combines VAE and latent diffusion pretraining on unlabeled crystals to improve graph encoder performance on property prediction by about 4-5% on JARVIS and MP datasets.