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William L. Hamilton; Payal Bajaj; Marinka Zitnik; Dan Jurafsky; Jure Leskovec

Abstract
Learning low-dimensional embeddings of knowledge graphs is a powerful approach used to predict unobserved or missing edges between entities. However, an open challenge in this area is developing techniques that can go beyond simple edge prediction and handle more complex logical queries, which might involve multiple unobserved edges, entities, and variables. For instance, given an incomplete biological knowledge graph, we might want to predict "em what drugs are likely to target proteins involved with both diseases X and Y?" -- a query that requires reasoning about all possible proteins that {\em might} interact with diseases X and Y. Here we introduce a framework to efficiently make predictions about conjunctive logical queries -- a flexible but tractable subset of first-order logic -- on incomplete knowledge graphs. In our approach, we embed graph nodes in a low-dimensional space and represent logical operators as learned geometric operations (e.g., translation, rotation) in this embedding space. By performing logical operations within a low-dimensional embedding space, our approach achieves a time complexity that is linear in the number of query variables, compared to the exponential complexity required by a naive enumeration-based approach. We demonstrate the utility of this framework in two application studies on real-world datasets with millions of relations: predicting logical relationships in a network of drug-gene-disease interactions and in a graph-based representation of social interactions derived from a popular web forum.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| complex-query-answering-on-fb15k | GQE | MRR 1p: 0.546 MRR 2i: 0.397 MRR 2p: 0.153 MRR 2u: 0.221 MRR 3i: 0.514 MRR 3p: 0.108 MRR ip: 0.191 MRR pi: 0.276 MRR up: 0.116 |
| complex-query-answering-on-fb15k-237 | GQE | MRR 1p: 0.35 MRR 2i: 0.233 MRR 2p: 0.072 MRR 2u: 0.082 MRR 3i: 0.346 MRR 3p: 0.053 MRR ip: 0.107 MRR pi: 0.165 MRR up: 0.057 |
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