Equivariant Energy-Guided SDE for Inverse Molecular Design
- URL: http://arxiv.org/abs/2209.15408v1
- Date: Fri, 30 Sep 2022 12:10:15 GMT
- Title: Equivariant Energy-Guided SDE for Inverse Molecular Design
- Authors: Fan Bao, Min Zhao, Zhongkai Hao, Peiyao Li, Chongxuan Li, Jun Zhu
- Abstract summary: EEGSDE is a flexible framework for controllable 3D molecule generation under the guidance of an energy function.
EEGSDE is able to generate molecules with multiple target properties by combining the corresponding energy functions linearly.
- Score: 35.50806745435793
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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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