Differentiable Neuro-Symbolic Reasoning on Large-Scale Knowledge Graphs
–Neural Information Processing Systems
Knowledge graph (KG) reasoning utilizes two primary techniques, i.e., rule-based and KG-embedding based. The former provides precise inferences, but inferring via concrete rules is not scalable. The latter enables efficient reasoning at the cost of ambiguous inference accuracy. Neuro-symbolic reasoning seeks to amalgamate the advantages of both techniques. The crux of this approach is replacing the predicted existence of all possible triples (i.e., truth scores inferred from rules) with a suitable approximation grounded in embedding representations.
Neural Information Processing Systems
Dec-25-2025, 10:50:43 GMT
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