Create molecular fingerprint features of Ligands and predicting Bioactivities Acting with G Protein-coupled Receptors
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wdl_rf
A two-stage algorithm WDL-RF allows end-to-end learning of prediction pipelines whose inputs are of arbitrary size, which contains the molecular fingerprint generation stage through a new weighted deep learning method and the bioactivity prediction stage by the random forest model.
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