Sulkysubject37/BioMoR
BioMoR: Bioinformatics Modeling with Recursion and Autoencoder-Based Ensemble An R package for advanced bioinformatics predictive modeling using recursive transformer-inspired architectures, autoencoders, random forests, XGBoost, and stacked ensembles. Includes utilities for cross-validation, calibration, benchmarking, and threshold optimisation.
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R
License
MIT
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Last pushed
Dec 14, 2025
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