Approximating Probabilistic Inference in Statistical EL with Knowledge Graph Embeddings
classification
💻 cs.AI
keywords
statisticalembeddingsgraphinferenceknowledgeprobabilisticruntimeapproach
read the original abstract
Statistical information is ubiquitous but drawing valid conclusions from it is prohibitively hard. We explain how knowledge graph embeddings can be used to approximate probabilistic inference efficiently using the example of Statistical EL (SEL), a statistical extension of the lightweight Description Logic EL. We provide proofs for runtime and soundness guarantees, and empirically evaluate the runtime and approximation quality of our approach.
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