Faithful approaches to rule learning
Rule learning involves developing machine learning models that can be applied to a set of logical facts to predict additional facts, as well as providing methods for extracting from the learned model a set of logical rules that explain symbolically the model’s predictions. Existing such approaches,...
Autori principali: | Tena Cucala, DJ, Cuenca Grau, B, Motik, B |
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Natura: | Conference item |
Lingua: | English |
Pubblicazione: |
IJCAI Organization
2022
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