Apr 24
GRISP: Guided Recurrent IRI Selection over SPARQL Skeletons
★★★★★
significance 2/5
The paper introduces GRISP, a new method for SPARQL-based question-answering over knowledge graphs using a small language model. The approach involves generating query skeletons and iteratively selecting knowledge graph items to improve accuracy on benchmarks like Wikidata.
Why it matters
Optimizing structured query generation via small language models suggests a path toward efficient, high-accuracy knowledge graph reasoning without massive compute overhead.
Tags
#sparql #knowledge graphs #slm #question-answeringRelated coverage
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