Relatedness and TBox-driven rule learning in large knowledge bases

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Abstract

We present RARL, an approach to discover rules of the form body head in large knowledge bases (KBs) that typically include a set of terminological facts (TBox) and a set of TBox-compliant assertional facts (ABox). RARL’s main intuition is to learn rules by leveraging TBox-information and the semantic relatedness between the predicate(s) in the atoms of the body and the predicate in the head. RARL uses an efficient relatedness-driven TBox traversal algorithm, which given an input rule head, generates the set of most semantically related candidate rule bodies. Then, rule confidence is computed in the ABox based on a set of positive and negative examples. Decoupling candidate generation and rule quality assessment offers greater flexibility than previous work.

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APA

Pirrò, G. (2020). Relatedness and TBox-driven rule learning in large knowledge bases. In AAAI 2020 - 34th AAAI Conference on Artificial Intelligence (pp. 2975–2982). AAAI press. https://doi.org/10.1609/aaai.v34i03.5690

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