Exact Learning Of Light Weight Description Logic Ontologies

Journal of Machine Learning Research(2018)

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摘要
We study the problem of learning description logic (DL) ontologies in Angluin et al.'s framework of exact learning via queries. We admit membership queries ("is a given subsumption entailed by the target ontology?") and equivalence queries ("is a given ontology equivalent to the target ontology?"). We present three main results: (1) ontologies formulated in (two relevant versions of) the description logic DL-Lite can be learned with polynomially many queries of polynomial size; (2) this is not the case for ontologies formulated in the description logic epsilon L, even when only acyclic ontologies are admitted; and (3) ontologies formulated in a fragment of epsilon L related to the web ontology language OWL 2 RL can be learned in polynomial time. We also show that neither membership nor equivalence queries alone are sufficient in cases (1) and (3).
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关键词
Exact Learning,Description Logic,Complexity
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