Predicting missing and noisy links via neighbourhood preserving graph embeddings in a clinical knowlegebase (19th IEEE ICMLA 2020)
For link discovery and quality assessments of medical knowledge graphs, we propose a novel neighborhood – based relationship entity embedding algorithm to simultaneously predict both noisy and missing links between medical entities such as diseases and symptoms.
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