BVSIMC: Bayesian Variable Selection-Guided Inductive Matrix Completion for Improved and Interpretable Drug Discovery
arXiv cs.LG / 3/20/2026
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Key Points
- The paper proposes BVSIMC, a Bayesian variable-selection-guided inductive matrix completion model that learns sparse latent embeddings while selecting relevant side features for drug discovery.
- It claims to improve predictive accuracy and interpretability compared with state-of-the-art methods, demonstrated through simulations and two real-world tasks: predicting drug resistance in Mycobacterium tuberculosis and predicting new drug-disease associations for computational repositioning.
- By enforcing sparsity, BVSIMC addresses high-dimensional, noisy side information and yields clinically meaningful side features that are easier to interpret.
- The work includes extensive validation on synthetic and real data, suggesting potential to enhance in silico drug discovery workflows and feature-led insights for researchers.
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