Li et al., 2024 - Google Patents
Contextual representation anchor network to alleviate selection bias in few-shot drug discoveryLi et al., 2024
View PDF- Document ID
- 12195727620934212956
- Author
- Li R
- Liu W
- Zhou X
- Li M
- Zhang Q
- Chen H
- Lin X
- Publication year
- Publication venue
- arXiv preprint arXiv:2410.20711
External Links
Snippet
In the drug discovery process, the low success rate of drug candidate screening often leads to insufficient labeled data, causing the few-shot learning problem in molecular property prediction. Existing methods for few-shot molecular property prediction overlook the sample …
- 238000007876 drug discovery 0 title description 15
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