Code to accompany the "Understanding the Performance of Knowledge Graph Embeddings in Drug Discovery" manuscript (Artificial Intelligence in the Life Sciences, 2022)
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Updated
Aug 16, 2024 - Python
Code to accompany the "Understanding the Performance of Knowledge Graph Embeddings in Drug Discovery" manuscript (Artificial Intelligence in the Life Sciences, 2022)
Treat Different Negatives Differently: Enriching Loss Functions with Domain and Range Constraints for Link Prediction
🪑 Benchmark the bloom filterer at https://pykeen.github.io/bloom-filterer-benchmark/
PyKEEN benchmarks with airspeed velocity served at https://pykeen.github.io/asv-benchmark/
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