Denoising methods introduce useful priors in pre-training methods for molecular property prediction, but chemically unaware noise can lead to inaccurate predictions in downstream tasks. A molecular pre-training framework that uses fractional denoising to improve molecular distribution modelling is proposed, resulting in better predictions in various property prediction tasks.
- Yuyan Ni
- Shikun Feng
- Yanyan Lan